inputs.py 52.9 KB
Newer Older
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22
# Copyright 2017 The TensorFlow Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ==============================================================================
"""Model input function for tf-learn object detection model."""

from __future__ import absolute_import
from __future__ import division
from __future__ import print_function

import functools

23
import tensorflow.compat.v1 as tf
24
from object_detection.builders import dataset_builder
25 26
from object_detection.builders import image_resizer_builder
from object_detection.builders import model_builder
27
from object_detection.builders import preprocessor_builder
28 29
from object_detection.core import box_list
from object_detection.core import box_list_ops
30
from object_detection.core import densepose_ops
31
from object_detection.core import keypoint_ops
32
from object_detection.core import preprocessor
33 34 35
from object_detection.core import standard_fields as fields
from object_detection.data_decoders import tf_example_decoder
from object_detection.protos import eval_pb2
36
from object_detection.protos import image_resizer_pb2
37
from object_detection.protos import input_reader_pb2
38
from object_detection.protos import model_pb2
39
from object_detection.protos import train_pb2
40
from object_detection.utils import config_util
41
from object_detection.utils import ops as util_ops
42
from object_detection.utils import shape_utils
43

44 45
HASH_KEY = 'hash'
HASH_BINS = 1 << 31
46
SERVING_FED_EXAMPLE_KEY = 'serialized_example'
47
_LABEL_OFFSET = 1
48

49 50 51
# A map of names to methods that help build the input pipeline.
INPUT_BUILDER_UTIL_MAP = {
    'dataset_build': dataset_builder.build,
52
    'model_build': model_builder.build,
53 54
}

55

P
pkulzc 已提交
56 57 58 59 60 61 62 63 64 65 66 67 68 69 70
def _multiclass_scores_or_one_hot_labels(multiclass_scores,
                                         groundtruth_boxes,
                                         groundtruth_classes, num_classes):
  """Returns one-hot encoding of classes when multiclass_scores is empty."""
  # Replace groundtruth_classes tensor with multiclass_scores tensor when its
  # non-empty. If multiclass_scores is empty fall back on groundtruth_classes
  # tensor.
  def true_fn():
    return tf.reshape(multiclass_scores,
                      [tf.shape(groundtruth_boxes)[0], num_classes])
  def false_fn():
    return tf.one_hot(groundtruth_classes, num_classes)
  return tf.cond(tf.size(multiclass_scores) > 0, true_fn, false_fn)


R
Rich Munoz 已提交
71 72 73
def convert_labeled_classes_to_k_hot(groundtruth_labeled_classes,
                                     num_classes,
                                     map_empty_to_ones=False):
74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89
  """Returns k-hot encoding of the labeled classes.

  If map_empty_to_ones is enabled and the input labeled_classes is empty,
  this function assumes all classes are exhaustively labeled, thus returning
  an all-one encoding.

  Args:
    groundtruth_labeled_classes: a Tensor holding a sparse representation of
      labeled classes.
    num_classes: an integer representing the number of classes
    map_empty_to_ones: boolean (default: False).  Set this to be True to default
    to an all-ones result if given an empty `groundtruth_labeled_classes`.
  Returns:
    A k-hot (and 0-indexed) tensor representation of
    `groundtruth_labeled_classes`.
  """
90 91 92 93 94 95 96 97 98 99 100 101

  # If the input labeled_classes is empty, it assumes all classes are
  # exhaustively labeled, thus returning an all-one encoding.
  def true_fn():
    return tf.sparse_to_dense(
        groundtruth_labeled_classes - _LABEL_OFFSET, [num_classes],
        tf.constant(1, dtype=tf.float32),
        validate_indices=False)

  def false_fn():
    return tf.ones(num_classes, dtype=tf.float32)

102 103 104
  if map_empty_to_ones:
    return tf.cond(tf.size(groundtruth_labeled_classes) > 0, true_fn, false_fn)
  return true_fn()
105 106 107 108 109


def _remove_unrecognized_classes(class_ids, unrecognized_label):
  """Returns class ids with unrecognized classes filtered out."""

110 111
  recognized_indices = tf.squeeze(
      tf.where(tf.greater(class_ids, unrecognized_label)), -1)
112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148
  return tf.gather(class_ids, recognized_indices)


def assert_or_prune_invalid_boxes(boxes):
  """Makes sure boxes have valid sizes (ymax >= ymin, xmax >= xmin).

  When the hardware supports assertions, the function raises an error when
  boxes have an invalid size. If assertions are not supported (e.g. on TPU),
  boxes with invalid sizes are filtered out.

  Args:
    boxes: float tensor of shape [num_boxes, 4]

  Returns:
    boxes: float tensor of shape [num_valid_boxes, 4] with invalid boxes
      filtered out.

  Raises:
    tf.errors.InvalidArgumentError: When we detect boxes with invalid size.
      This is not supported on TPUs.
  """

  ymin, xmin, ymax, xmax = tf.split(
      boxes, num_or_size_splits=4, axis=1)

  height_check = tf.Assert(tf.reduce_all(ymax >= ymin), [ymin, ymax])
  width_check = tf.Assert(tf.reduce_all(xmax >= xmin), [xmin, xmax])

  with tf.control_dependencies([height_check, width_check]):
    boxes_tensor = tf.concat([ymin, xmin, ymax, xmax], axis=1)
    boxlist = box_list.BoxList(boxes_tensor)
    # TODO(b/149221748) Remove pruning when XLA supports assertions.
    boxlist = box_list_ops.prune_small_boxes(boxlist, 0)

  return boxlist.get()


149 150 151 152 153 154
def transform_input_data(tensor_dict,
                         model_preprocess_fn,
                         image_resizer_fn,
                         num_classes,
                         data_augmentation_fn=None,
                         merge_multiple_boxes=False,
155
                         retain_original_image=False,
156
                         use_multiclass_scores=False,
157
                         use_bfloat16=False,
158 159
                         retain_original_image_additional_channels=False,
                         keypoint_type_weight=None):
160 161 162
  """A single function that is responsible for all input data transformations.

  Data transformation functions are applied in the following order.
163 164 165 166 167
  1. If key fields.InputDataFields.image_additional_channels is present in
     tensor_dict, the additional channels will be merged into
     fields.InputDataFields.image.
  2. data_augmentation_fn (optional): applied on tensor_dict.
  3. model_preprocess_fn: applied only on image tensor in tensor_dict.
168 169 170 171 172 173
  4. keypoint_type_weight (optional): If groundtruth keypoints are in
     the tensor dictionary, per-keypoint weights are produced. These weights are
     initialized by `keypoint_type_weight` (or ones if left None).
     Then, for all keypoints that are not visible, the weights are set to 0 (to
     avoid penalizing the model in a loss function).
  5. image_resizer_fn: applied on original image and instance mask tensor in
174
     tensor_dict.
175 176
  6. one_hot_encoding: applied to classes tensor in tensor_dict.
  7. merge_multiple_boxes (optional): when groundtruth boxes are exactly the
177 178 179 180 181 182 183 184 185
     same they can be merged into a single box with an associated k-hot class
     label.

  Args:
    tensor_dict: dictionary containing input tensors keyed by
      fields.InputDataFields.
    model_preprocess_fn: model's preprocess function to apply on image tensor.
      This function must take in a 4-D float tensor and return a 4-D preprocess
      float tensor and a tensor containing the true image shape.
186 187 188 189
    image_resizer_fn: image resizer function to apply on groundtruth instance
      `masks. This function must take a 3-D float tensor of an image and a 3-D
      tensor of instance masks and return a resized version of these along with
      the true shapes.
190 191 192 193 194 195 196 197
    num_classes: number of max classes to one-hot (or k-hot) encode the class
      labels.
    data_augmentation_fn: (optional) data augmentation function to apply on
      input `tensor_dict`.
    merge_multiple_boxes: (optional) whether to merge multiple groundtruth boxes
      and classes for a given image if the boxes are exactly the same.
    retain_original_image: (optional) whether to retain original image in the
      output dictionary.
P
pkulzc 已提交
198 199 200 201
    use_multiclass_scores: whether to use multiclass scores as class targets
      instead of one-hot encoding of `groundtruth_classes`. When
      this is True and multiclass_scores is empty, one-hot encoding of
      `groundtruth_classes` is used as a fallback.
202
    use_bfloat16: (optional) a bool, whether to use bfloat16 in training.
203 204
    retain_original_image_additional_channels: (optional) Whether to retain
      original image additional channels in the output dictionary.
205 206 207
    keypoint_type_weight: A list (of length num_keypoints) containing
      groundtruth loss weights to use for each keypoint. If None, will use a
      weight of 1.
208 209 210 211

  Returns:
    A dictionary keyed by fields.InputDataFields containing the tensors obtained
    after applying all the transformations.
212 213 214 215 216

  Raises:
    KeyError: If both groundtruth_labeled_classes and groundtruth_image_classes
      are provided by the decoder in tensor_dict since both fields are
      considered to contain the same information.
217
  """
P
pkulzc 已提交
218
  out_tensor_dict = tensor_dict.copy()
219

220 221 222 223 224 225
  input_fields = fields.InputDataFields
  labeled_classes_field = input_fields.groundtruth_labeled_classes
  image_classes_field = input_fields.groundtruth_image_classes
  verified_neg_classes_field = input_fields.groundtruth_verified_neg_classes
  not_exhaustive_field = input_fields.groundtruth_not_exhaustive_classes

226 227 228 229 230
  if (labeled_classes_field in out_tensor_dict and
      image_classes_field in out_tensor_dict):
    raise KeyError('groundtruth_labeled_classes and groundtruth_image_classes'
                   'are provided by the decoder, but only one should be set.')

231 232 233 234 235
  for field, map_empty_to_ones in [
      (labeled_classes_field, True),
      (image_classes_field, True),
      (verified_neg_classes_field, False),
      (not_exhaustive_field, False)]:
236 237 238
    if field in out_tensor_dict:
      out_tensor_dict[field] = _remove_unrecognized_classes(
          out_tensor_dict[field], unrecognized_label=-1)
R
Rich Munoz 已提交
239
      out_tensor_dict[field] = convert_labeled_classes_to_k_hot(
240
          out_tensor_dict[field], num_classes, map_empty_to_ones)
241 242

  if input_fields.multiclass_scores in out_tensor_dict:
P
pkulzc 已提交
243
    out_tensor_dict[
244
        input_fields
P
pkulzc 已提交
245
        .multiclass_scores] = _multiclass_scores_or_one_hot_labels(
246 247 248
            out_tensor_dict[input_fields.multiclass_scores],
            out_tensor_dict[input_fields.groundtruth_boxes],
            out_tensor_dict[input_fields.groundtruth_classes],
P
pkulzc 已提交
249 250
            num_classes)

251
  if input_fields.groundtruth_boxes in out_tensor_dict:
P
pkulzc 已提交
252 253 254
    out_tensor_dict = util_ops.filter_groundtruth_with_nan_box_coordinates(
        out_tensor_dict)
    out_tensor_dict = util_ops.filter_unrecognized_classes(out_tensor_dict)
255

256
  if retain_original_image:
257 258
    out_tensor_dict[input_fields.original_image] = tf.cast(
        image_resizer_fn(out_tensor_dict[input_fields.image],
P
pkulzc 已提交
259
                         None)[0], tf.uint8)
260

261 262 263 264
  if input_fields.image_additional_channels in out_tensor_dict:
    channels = out_tensor_dict[input_fields.image_additional_channels]
    out_tensor_dict[input_fields.image] = tf.concat(
        [out_tensor_dict[input_fields.image], channels], axis=2)
265 266
    if retain_original_image_additional_channels:
      out_tensor_dict[
267
          input_fields.image_additional_channels] = tf.cast(
268
              image_resizer_fn(channels, None)[0], tf.uint8)
269

270 271
  # Apply data augmentation ops.
  if data_augmentation_fn is not None:
P
pkulzc 已提交
272
    out_tensor_dict = data_augmentation_fn(out_tensor_dict)
273 274

  # Apply model preprocessing ops and resize instance masks.
275
  image = out_tensor_dict[input_fields.image]
276
  preprocessed_resized_image, true_image_shape = model_preprocess_fn(
277
      tf.expand_dims(tf.cast(image, dtype=tf.float32), axis=0))
278 279 280 281 282 283 284 285 286 287

  preprocessed_shape = tf.shape(preprocessed_resized_image)
  new_height, new_width = preprocessed_shape[1], preprocessed_shape[2]

  im_box = tf.stack([
      0.0, 0.0,
      tf.to_float(new_height) / tf.to_float(true_image_shape[0, 0]),
      tf.to_float(new_width) / tf.to_float(true_image_shape[0, 1])
  ])

288 289
  if input_fields.groundtruth_boxes in tensor_dict:
    bboxes = out_tensor_dict[input_fields.groundtruth_boxes]
290 291
    boxlist = box_list.BoxList(bboxes)
    realigned_bboxes = box_list_ops.change_coordinate_frame(boxlist, im_box)
292 293 294

    realigned_boxes_tensor = realigned_bboxes.get()
    valid_boxes_tensor = assert_or_prune_invalid_boxes(realigned_boxes_tensor)
295
    out_tensor_dict[
296
        input_fields.groundtruth_boxes] = valid_boxes_tensor
297

298 299
  if input_fields.groundtruth_keypoints in tensor_dict:
    keypoints = out_tensor_dict[input_fields.groundtruth_keypoints]
300 301 302
    realigned_keypoints = keypoint_ops.change_coordinate_frame(keypoints,
                                                               im_box)
    out_tensor_dict[
303 304 305 306
        input_fields.groundtruth_keypoints] = realigned_keypoints
    flds_gt_kpt = input_fields.groundtruth_keypoints
    flds_gt_kpt_vis = input_fields.groundtruth_keypoint_visibilities
    flds_gt_kpt_weights = input_fields.groundtruth_keypoint_weights
307 308 309 310
    if flds_gt_kpt_vis not in out_tensor_dict:
      out_tensor_dict[flds_gt_kpt_vis] = tf.ones_like(
          out_tensor_dict[flds_gt_kpt][:, :, 0],
          dtype=tf.bool)
311 312 313 314 315 316 317 318
    flds_gt_kpt_depth = fields.InputDataFields.groundtruth_keypoint_depths
    flds_gt_kpt_depth_weight = (
        fields.InputDataFields.groundtruth_keypoint_depth_weights)
    if flds_gt_kpt_depth in out_tensor_dict:
      out_tensor_dict[flds_gt_kpt_depth] = out_tensor_dict[flds_gt_kpt_depth]
      out_tensor_dict[flds_gt_kpt_depth_weight] = out_tensor_dict[
          flds_gt_kpt_depth_weight]

319 320 321 322
    out_tensor_dict[flds_gt_kpt_weights] = (
        keypoint_ops.keypoint_weights_from_visibilities(
            out_tensor_dict[flds_gt_kpt_vis],
            keypoint_type_weight))
323

324
  dp_surface_coords_fld = input_fields.groundtruth_dp_surface_coords
325 326 327 328 329 330
  if dp_surface_coords_fld in tensor_dict:
    dp_surface_coords = out_tensor_dict[dp_surface_coords_fld]
    realigned_dp_surface_coords = densepose_ops.change_coordinate_frame(
        dp_surface_coords, im_box)
    out_tensor_dict[dp_surface_coords_fld] = realigned_dp_surface_coords

331 332 333
  if use_bfloat16:
    preprocessed_resized_image = tf.cast(
        preprocessed_resized_image, tf.bfloat16)
334 335 336 337
    if input_fields.context_features in out_tensor_dict:
      out_tensor_dict[input_fields.context_features] = tf.cast(
          out_tensor_dict[input_fields.context_features], tf.bfloat16)
  out_tensor_dict[input_fields.image] = tf.squeeze(
338
      preprocessed_resized_image, axis=0)
339
  out_tensor_dict[input_fields.true_image_shape] = tf.squeeze(
340
      true_image_shape, axis=0)
341 342
  if input_fields.groundtruth_instance_masks in out_tensor_dict:
    masks = out_tensor_dict[input_fields.groundtruth_instance_masks]
343
    _, resized_masks, _ = image_resizer_fn(image, masks)
P
pkulzc 已提交
344 345
    if use_bfloat16:
      resized_masks = tf.cast(resized_masks, tf.bfloat16)
P
pkulzc 已提交
346
    out_tensor_dict[
347
        input_fields.groundtruth_instance_masks] = resized_masks
348

P
pkulzc 已提交
349
  zero_indexed_groundtruth_classes = out_tensor_dict[
350
      input_fields.groundtruth_classes] - _LABEL_OFFSET
351
  if use_multiclass_scores:
P
pkulzc 已提交
352
    out_tensor_dict[
353 354
        input_fields.groundtruth_classes] = out_tensor_dict[
            input_fields.multiclass_scores]
P
pkulzc 已提交
355
  else:
356
    out_tensor_dict[input_fields.groundtruth_classes] = tf.one_hot(
P
pkulzc 已提交
357
        zero_indexed_groundtruth_classes, num_classes)
358
  out_tensor_dict.pop(input_fields.multiclass_scores, None)
359

360
  if input_fields.groundtruth_confidences in out_tensor_dict:
P
pkulzc 已提交
361
    groundtruth_confidences = out_tensor_dict[
362
        input_fields.groundtruth_confidences]
363
    # Map the confidences to the one-hot encoding of classes
364
    out_tensor_dict[input_fields.groundtruth_confidences] = (
365
        tf.reshape(groundtruth_confidences, [-1, 1]) *
366
        out_tensor_dict[input_fields.groundtruth_classes])
367 368 369
  else:
    groundtruth_confidences = tf.ones_like(
        zero_indexed_groundtruth_classes, dtype=tf.float32)
370 371
    out_tensor_dict[input_fields.groundtruth_confidences] = (
        out_tensor_dict[input_fields.groundtruth_classes])
372

373
  if merge_multiple_boxes:
374 375
    merged_boxes, merged_classes, merged_confidences, _ = (
        util_ops.merge_boxes_with_multiple_labels(
376
            out_tensor_dict[input_fields.groundtruth_boxes],
377 378 379
            zero_indexed_groundtruth_classes,
            groundtruth_confidences,
            num_classes))
380
    merged_classes = tf.cast(merged_classes, tf.float32)
381 382 383
    out_tensor_dict[input_fields.groundtruth_boxes] = merged_boxes
    out_tensor_dict[input_fields.groundtruth_classes] = merged_classes
    out_tensor_dict[input_fields.groundtruth_confidences] = (
384
        merged_confidences)
385 386 387
  if input_fields.groundtruth_boxes in out_tensor_dict:
    out_tensor_dict[input_fields.num_groundtruth_boxes] = tf.shape(
        out_tensor_dict[input_fields.groundtruth_boxes])[0]
388

P
pkulzc 已提交
389
  return out_tensor_dict
390 391


392 393 394 395 396
def pad_input_data_to_static_shapes(tensor_dict,
                                    max_num_boxes,
                                    num_classes,
                                    spatial_image_shape=None,
                                    max_num_context_features=None,
397 398
                                    context_feature_length=None,
                                    max_dp_points=336):
399 400
  """Pads input tensors to static shapes.

401 402 403
  In case num_additional_channels > 0, we assume that the additional channels
  have already been concatenated to the base image.

404 405 406 407 408 409 410 411
  Args:
    tensor_dict: Tensor dictionary of input data
    max_num_boxes: Max number of groundtruth boxes needed to compute shapes for
      padding.
    num_classes: Number of classes in the dataset needed to compute shapes for
      padding.
    spatial_image_shape: A list of two integers of the form [height, width]
      containing expected spatial shape of the image.
412 413 414
    max_num_context_features (optional): The maximum number of context
      features needed to compute shapes padding.
    context_feature_length (optional): The length of the context feature.
415 416 417 418 419
    max_dp_points (optional): The maximum number of DensePose sampled points per
      instance. The default (336) is selected since the original DensePose paper
      (https://arxiv.org/pdf/1802.00434.pdf) indicates that the maximum number
      of samples per part is 14, and therefore 24 * 14 = 336 is the maximum
      sampler per instance.
420 421 422 423 424 425

  Returns:
    A dictionary keyed by fields.InputDataFields containing padding shapes for
    tensors in the dataset.

  Raises:
426
    ValueError: If groundtruth classes is neither rank 1 nor rank 2, or if we
427 428 429
      detect that additional channels have not been concatenated yet, or if
      max_num_context_features is not specified and context_features is in the
      tensor dict.
430 431 432 433 434 435
  """
  if not spatial_image_shape or spatial_image_shape == [-1, -1]:
    height, width = None, None
  else:
    height, width = spatial_image_shape  # pylint: disable=unpacking-non-sequence

436
  input_fields = fields.InputDataFields
437
  num_additional_channels = 0
438
  if input_fields.image_additional_channels in tensor_dict:
439
    num_additional_channels = shape_utils.get_dim_as_int(tensor_dict[
440
        input_fields.image_additional_channels].shape[2])
441 442 443 444

  # We assume that if num_additional_channels > 0, then it has already been
  # concatenated to the base image (but not the ground truth).
  num_channels = 3
445
  if input_fields.image in tensor_dict:
446
    num_channels = shape_utils.get_dim_as_int(
447
        tensor_dict[input_fields.image].shape[2])
448 449 450 451 452 453

  if num_additional_channels:
    if num_additional_channels >= num_channels:
      raise ValueError(
          'Image must be already concatenated with additional channels.')

454
    if (input_fields.original_image in tensor_dict and
455
        shape_utils.get_dim_as_int(
456
            tensor_dict[input_fields.original_image].shape[2]) ==
457 458 459 460
        num_channels):
      raise ValueError(
          'Image must be already concatenated with additional channels.')

461
  if input_fields.context_features in tensor_dict and (
462 463 464 465 466
      max_num_context_features is None):
    raise ValueError('max_num_context_features must be specified in the model '
                     'config if include_context is specified in the input '
                     'config')

467
  padding_shapes = {
468 469 470
      input_fields.image: [height, width, num_channels],
      input_fields.original_image_spatial_shape: [2],
      input_fields.image_additional_channels: [
471 472
          height, width, num_additional_channels
      ],
473 474 475 476 477 478 479
      input_fields.source_id: [],
      input_fields.filename: [],
      input_fields.key: [],
      input_fields.groundtruth_difficult: [max_num_boxes],
      input_fields.groundtruth_boxes: [max_num_boxes, 4],
      input_fields.groundtruth_classes: [max_num_boxes, num_classes],
      input_fields.groundtruth_instance_masks: [
480 481
          max_num_boxes, height, width
      ],
482
      input_fields.groundtruth_instance_mask_weights: [max_num_boxes],
483 484 485 486 487
      input_fields.groundtruth_is_crowd: [max_num_boxes],
      input_fields.groundtruth_group_of: [max_num_boxes],
      input_fields.groundtruth_area: [max_num_boxes],
      input_fields.groundtruth_weights: [max_num_boxes],
      input_fields.groundtruth_confidences: [
488 489
          max_num_boxes, num_classes
      ],
490 491 492 493 494 495 496
      input_fields.num_groundtruth_boxes: [],
      input_fields.groundtruth_label_types: [max_num_boxes],
      input_fields.groundtruth_label_weights: [max_num_boxes],
      input_fields.true_image_shape: [3],
      input_fields.groundtruth_image_classes: [num_classes],
      input_fields.groundtruth_image_confidences: [num_classes],
      input_fields.groundtruth_labeled_classes: [num_classes],
497 498
  }

499 500
  if input_fields.original_image in tensor_dict:
    padding_shapes[input_fields.original_image] = [
501
        height, width,
502
        shape_utils.get_dim_as_int(tensor_dict[input_fields.
503
                                               original_image].shape[2])
504
    ]
505
  if input_fields.groundtruth_keypoints in tensor_dict:
506
    tensor_shape = (
507
        tensor_dict[input_fields.groundtruth_keypoints].shape)
508 509 510
    padding_shape = [max_num_boxes,
                     shape_utils.get_dim_as_int(tensor_shape[1]),
                     shape_utils.get_dim_as_int(tensor_shape[2])]
511 512 513
    padding_shapes[input_fields.groundtruth_keypoints] = padding_shape
  if input_fields.groundtruth_keypoint_visibilities in tensor_dict:
    tensor_shape = tensor_dict[input_fields.
514
                               groundtruth_keypoint_visibilities].shape
515
    padding_shape = [max_num_boxes, shape_utils.get_dim_as_int(tensor_shape[1])]
516
    padding_shapes[input_fields.
517 518
                   groundtruth_keypoint_visibilities] = padding_shape

519 520 521 522 523 524 525 526 527
  if fields.InputDataFields.groundtruth_keypoint_depths in tensor_dict:
    tensor_shape = tensor_dict[fields.InputDataFields.
                               groundtruth_keypoint_depths].shape
    padding_shape = [max_num_boxes, shape_utils.get_dim_as_int(tensor_shape[1])]
    padding_shapes[fields.InputDataFields.
                   groundtruth_keypoint_depths] = padding_shape
    padding_shapes[fields.InputDataFields.
                   groundtruth_keypoint_depth_weights] = padding_shape

528
  if input_fields.groundtruth_keypoint_weights in tensor_dict:
529
    tensor_shape = (
530
        tensor_dict[input_fields.groundtruth_keypoint_weights].shape)
531
    padding_shape = [max_num_boxes, shape_utils.get_dim_as_int(tensor_shape[1])]
532
    padding_shapes[input_fields.
533
                   groundtruth_keypoint_weights] = padding_shape
534
  if input_fields.groundtruth_dp_num_points in tensor_dict:
535
    padding_shapes[
536
        input_fields.groundtruth_dp_num_points] = [max_num_boxes]
537
    padding_shapes[
538
        input_fields.groundtruth_dp_part_ids] = [
539 540
            max_num_boxes, max_dp_points]
    padding_shapes[
541
        input_fields.groundtruth_dp_surface_coords] = [
542
            max_num_boxes, max_dp_points, 4]
543 544 545 546 547 548 549 550
  if input_fields.groundtruth_track_ids in tensor_dict:
    padding_shapes[
        input_fields.groundtruth_track_ids] = [max_num_boxes]

  if input_fields.groundtruth_verified_neg_classes in tensor_dict:
    padding_shapes[
        input_fields.groundtruth_verified_neg_classes] = [num_classes]
  if input_fields.groundtruth_not_exhaustive_classes in tensor_dict:
551
    padding_shapes[
552
        input_fields.groundtruth_not_exhaustive_classes] = [num_classes]
553 554

  # Prepare for ContextRCNN related fields.
555
  if input_fields.context_features in tensor_dict:
556
    padding_shape = [max_num_context_features, context_feature_length]
557
    padding_shapes[input_fields.context_features] = padding_shape
558 559

    tensor_shape = tf.shape(
560 561 562 563 564 565 566 567
        tensor_dict[fields.InputDataFields.context_features])
    tensor_dict[fields.InputDataFields.valid_context_size] = tensor_shape[0]
    padding_shapes[fields.InputDataFields.valid_context_size] = []
  if fields.InputDataFields.context_feature_length in tensor_dict:
    padding_shapes[fields.InputDataFields.context_feature_length] = []
  if fields.InputDataFields.context_features_image_id_list in tensor_dict:
    padding_shapes[fields.InputDataFields.context_features_image_id_list] = [
        max_num_context_features]
568

569 570
  if input_fields.is_annotated in tensor_dict:
    padding_shapes[input_fields.is_annotated] = []
571

572 573
  padded_tensor_dict = {}
  for tensor_name in tensor_dict:
574 575
    padded_tensor_dict[tensor_name] = shape_utils.pad_or_clip_nd(
        tensor_dict[tensor_name], padding_shapes[tensor_name])
576 577 578

  # Make sure that the number of groundtruth boxes now reflects the
  # padded/clipped tensors.
579 580
  if input_fields.num_groundtruth_boxes in padded_tensor_dict:
    padded_tensor_dict[input_fields.num_groundtruth_boxes] = (
581
        tf.minimum(
582
            padded_tensor_dict[input_fields.num_groundtruth_boxes],
583
            max_num_boxes))
584 585 586
  return padded_tensor_dict


587 588 589 590 591 592 593 594 595 596 597 598 599 600
def augment_input_data(tensor_dict, data_augmentation_options):
  """Applies data augmentation ops to input tensors.

  Args:
    tensor_dict: A dictionary of input tensors keyed by fields.InputDataFields.
    data_augmentation_options: A list of tuples, where each tuple contains a
      function and a dictionary that contains arguments and their values.
      Usually, this is the output of core/preprocessor.build.

  Returns:
    A dictionary of tensors obtained by applying data augmentation ops to the
    input tensor dictionary.
  """
  tensor_dict[fields.InputDataFields.image] = tf.expand_dims(
601
      tf.cast(tensor_dict[fields.InputDataFields.image], dtype=tf.float32), 0)
602 603 604

  include_instance_masks = (fields.InputDataFields.groundtruth_instance_masks
                            in tensor_dict)
605 606
  include_instance_mask_weights = (
      fields.InputDataFields.groundtruth_instance_mask_weights in tensor_dict)
607 608
  include_keypoints = (fields.InputDataFields.groundtruth_keypoints
                       in tensor_dict)
609 610
  include_keypoint_visibilities = (
      fields.InputDataFields.groundtruth_keypoint_visibilities in tensor_dict)
611 612
  include_keypoint_depths = (
      fields.InputDataFields.groundtruth_keypoint_depths in tensor_dict)
613 614 615 616
  include_label_weights = (fields.InputDataFields.groundtruth_weights
                           in tensor_dict)
  include_label_confidences = (fields.InputDataFields.groundtruth_confidences
                               in tensor_dict)
617 618
  include_multiclass_scores = (fields.InputDataFields.multiclass_scores in
                               tensor_dict)
619 620 621 622
  dense_pose_fields = [fields.InputDataFields.groundtruth_dp_num_points,
                       fields.InputDataFields.groundtruth_dp_part_ids,
                       fields.InputDataFields.groundtruth_dp_surface_coords]
  include_dense_pose = all(field in tensor_dict for field in dense_pose_fields)
623 624 625
  tensor_dict = preprocessor.preprocess(
      tensor_dict, data_augmentation_options,
      func_arg_map=preprocessor.get_default_func_arg_map(
626 627
          include_label_weights=include_label_weights,
          include_label_confidences=include_label_confidences,
628
          include_multiclass_scores=include_multiclass_scores,
629
          include_instance_masks=include_instance_masks,
630
          include_instance_mask_weights=include_instance_mask_weights,
631
          include_keypoints=include_keypoints,
632
          include_keypoint_visibilities=include_keypoint_visibilities,
633 634
          include_dense_pose=include_dense_pose,
          include_keypoint_depths=include_keypoint_depths))
635 636 637 638 639
  tensor_dict[fields.InputDataFields.image] = tf.squeeze(
      tensor_dict[fields.InputDataFields.image], axis=0)
  return tensor_dict


640 641 642 643 644 645
def _get_labels_dict(input_dict):
  """Extracts labels dict from input dict."""
  required_label_keys = [
      fields.InputDataFields.num_groundtruth_boxes,
      fields.InputDataFields.groundtruth_boxes,
      fields.InputDataFields.groundtruth_classes,
646
      fields.InputDataFields.groundtruth_weights,
647 648 649 650 651 652
  ]
  labels_dict = {}
  for key in required_label_keys:
    labels_dict[key] = input_dict[key]

  optional_label_keys = [
653
      fields.InputDataFields.groundtruth_confidences,
654
      fields.InputDataFields.groundtruth_labeled_classes,
655
      fields.InputDataFields.groundtruth_keypoints,
656 657
      fields.InputDataFields.groundtruth_keypoint_depths,
      fields.InputDataFields.groundtruth_keypoint_depth_weights,
658
      fields.InputDataFields.groundtruth_instance_masks,
659
      fields.InputDataFields.groundtruth_instance_mask_weights,
660 661
      fields.InputDataFields.groundtruth_area,
      fields.InputDataFields.groundtruth_is_crowd,
662
      fields.InputDataFields.groundtruth_group_of,
663 664 665
      fields.InputDataFields.groundtruth_difficult,
      fields.InputDataFields.groundtruth_keypoint_visibilities,
      fields.InputDataFields.groundtruth_keypoint_weights,
666 667
      fields.InputDataFields.groundtruth_dp_num_points,
      fields.InputDataFields.groundtruth_dp_part_ids,
668
      fields.InputDataFields.groundtruth_dp_surface_coords,
669 670
      fields.InputDataFields.groundtruth_track_ids,
      fields.InputDataFields.groundtruth_verified_neg_classes,
671 672
      fields.InputDataFields.groundtruth_not_exhaustive_classes,
      fields.InputDataFields.groundtruth_image_classes,
673 674 675 676 677 678 679 680 681 682 683
  ]

  for key in optional_label_keys:
    if key in input_dict:
      labels_dict[key] = input_dict[key]
  if fields.InputDataFields.groundtruth_difficult in labels_dict:
    labels_dict[fields.InputDataFields.groundtruth_difficult] = tf.cast(
        labels_dict[fields.InputDataFields.groundtruth_difficult], tf.int32)
  return labels_dict


684 685 686 687 688 689 690 691 692 693 694 695 696 697 698 699 700 701 702 703 704 705 706 707 708 709 710 711 712
def _replace_empty_string_with_random_number(string_tensor):
  """Returns string unchanged if non-empty, and random string tensor otherwise.

  The random string is an integer 0 and 2**63 - 1, casted as string.


  Args:
    string_tensor: A tf.tensor of dtype string.

  Returns:
    out_string: A tf.tensor of dtype string. If string_tensor contains the empty
      string, out_string will contain a random integer casted to a string.
      Otherwise string_tensor is returned unchanged.

  """

  empty_string = tf.constant('', dtype=tf.string, name='EmptyString')

  random_source_id = tf.as_string(
      tf.random_uniform(shape=[], maxval=2**63 - 1, dtype=tf.int64))

  out_string = tf.cond(
      tf.equal(string_tensor, empty_string),
      true_fn=lambda: random_source_id,
      false_fn=lambda: string_tensor)

  return out_string


713
def _get_features_dict(input_dict, include_source_id=False):
714
  """Extracts features dict from input dict."""
715 716 717 718 719

  source_id = _replace_empty_string_with_random_number(
      input_dict[fields.InputDataFields.source_id])

  hash_from_source_id = tf.string_to_hash_bucket_fast(source_id, HASH_BINS)
720 721 722 723 724
  features = {
      fields.InputDataFields.image:
          input_dict[fields.InputDataFields.image],
      HASH_KEY: tf.cast(hash_from_source_id, tf.int32),
      fields.InputDataFields.true_image_shape:
P
pkulzc 已提交
725 726 727
          input_dict[fields.InputDataFields.true_image_shape],
      fields.InputDataFields.original_image_spatial_shape:
          input_dict[fields.InputDataFields.original_image_spatial_shape]
728
  }
729 730
  if include_source_id:
    features[fields.InputDataFields.source_id] = source_id
731 732 733
  if fields.InputDataFields.original_image in input_dict:
    features[fields.InputDataFields.original_image] = input_dict[
        fields.InputDataFields.original_image]
734 735 736
  if fields.InputDataFields.image_additional_channels in input_dict:
    features[fields.InputDataFields.image_additional_channels] = input_dict[
        fields.InputDataFields.image_additional_channels]
737 738 739 740 741 742
  if fields.InputDataFields.context_features in input_dict:
    features[fields.InputDataFields.context_features] = input_dict[
        fields.InputDataFields.context_features]
  if fields.InputDataFields.valid_context_size in input_dict:
    features[fields.InputDataFields.valid_context_size] = input_dict[
        fields.InputDataFields.valid_context_size]
743 744 745
  if fields.InputDataFields.context_features_image_id_list in input_dict:
    features[fields.InputDataFields.context_features_image_id_list] = (
        input_dict[fields.InputDataFields.context_features_image_id_list])
746 747 748
  return features


749 750
def create_train_input_fn(train_config, train_input_config,
                          model_config):
751 752 753 754 755
  """Creates a train `input` function for `Estimator`.

  Args:
    train_config: A train_pb2.TrainConfig.
    train_input_config: An input_reader_pb2.InputReader.
756
    model_config: A model_pb2.DetectionModel.
757 758 759 760 761

  Returns:
    `input_fn` for `Estimator` in TRAIN mode.
  """

762
  def _train_input_fn(params=None):
763 764
    return train_input(train_config, train_input_config, model_config,
                       params=params)
765

766
  return _train_input_fn
767

768

769
def train_input(train_config, train_input_config,
770
                model_config, model=None, params=None, input_context=None):
771 772 773 774 775 776 777 778 779
  """Returns `features` and `labels` tensor dictionaries for training.

  Args:
    train_config: A train_pb2.TrainConfig.
    train_input_config: An input_reader_pb2.InputReader.
    model_config: A model_pb2.DetectionModel.
    model: A pre-constructed Detection Model.
      If None, one will be created from the config.
    params: Parameter dictionary passed from the estimator.
780 781 782
    input_context: optional, A tf.distribute.InputContext object used to
      shard filenames and compute per-replica batch_size when this function
      is being called per-replica.
783 784 785 786 787 788 789 790 791 792 793 794 795 796 797 798 799 800 801 802 803 804 805 806 807 808 809 810 811 812

  Returns:
    A tf.data.Dataset that holds (features, labels) tuple.

    features: Dictionary of feature tensors.
      features[fields.InputDataFields.image] is a [batch_size, H, W, C]
        float32 tensor with preprocessed images.
      features[HASH_KEY] is a [batch_size] int32 tensor representing unique
        identifiers for the images.
      features[fields.InputDataFields.true_image_shape] is a [batch_size, 3]
        int32 tensor representing the true image shapes, as preprocessed
        images could be padded.
      features[fields.InputDataFields.original_image] (optional) is a
        [batch_size, H, W, C] float32 tensor with original images.
    labels: Dictionary of groundtruth tensors.
      labels[fields.InputDataFields.num_groundtruth_boxes] is a [batch_size]
        int32 tensor indicating the number of groundtruth boxes.
      labels[fields.InputDataFields.groundtruth_boxes] is a
        [batch_size, num_boxes, 4] float32 tensor containing the corners of
        the groundtruth boxes.
      labels[fields.InputDataFields.groundtruth_classes] is a
        [batch_size, num_boxes, num_classes] float32 one-hot tensor of
        classes.
      labels[fields.InputDataFields.groundtruth_weights] is a
        [batch_size, num_boxes] float32 tensor containing groundtruth weights
        for the boxes.
      -- Optional --
      labels[fields.InputDataFields.groundtruth_instance_masks] is a
        [batch_size, num_boxes, H, W] float32 tensor containing only binary
        values, which represent instance masks for objects.
813 814 815
      labels[fields.InputDataFields.groundtruth_instance_mask_weights] is a
        [batch_size, num_boxes] float32 tensor containing groundtruth weights
        for each instance mask.
816 817 818
      labels[fields.InputDataFields.groundtruth_keypoints] is a
        [batch_size, num_boxes, num_keypoints, 2] float32 tensor containing
        keypoints for each box.
819 820 821 822 823 824
      labels[fields.InputDataFields.groundtruth_weights] is a
        [batch_size, num_boxes, num_keypoints] float32 tensor containing
        groundtruth weights for the keypoints.
      labels[fields.InputDataFields.groundtruth_visibilities] is a
        [batch_size, num_boxes, num_keypoints] bool tensor containing
        groundtruth visibilities for each keypoint.
825 826
      labels[fields.InputDataFields.groundtruth_labeled_classes] is a
        [batch_size, num_classes] float32 k-hot tensor of classes.
827 828 829 830 831 832 833 834 835 836 837
      labels[fields.InputDataFields.groundtruth_dp_num_points] is a
        [batch_size, num_boxes] int32 tensor with the number of sampled
        DensePose points per object.
      labels[fields.InputDataFields.groundtruth_dp_part_ids] is a
        [batch_size, num_boxes, max_sampled_points] int32 tensor with the
        DensePose part ids (0-indexed) per object.
      labels[fields.InputDataFields.groundtruth_dp_surface_coords] is a
        [batch_size, num_boxes, max_sampled_points, 4] float32 tensor with the
        DensePose surface coordinates. The format is (y, x, v, u), where (y, x)
        are normalized image coordinates and (v, u) are normalized surface part
        coordinates.
838 839
      labels[fields.InputDataFields.groundtruth_track_ids] is a
        [batch_size, num_boxes] int32 tensor with the track ID for each object.
840 841 842 843 844 845 846 847 848 849 850 851 852 853 854 855 856 857 858 859 860

  Raises:
    TypeError: if the `train_config`, `train_input_config` or `model_config`
      are not of the correct type.
  """
  if not isinstance(train_config, train_pb2.TrainConfig):
    raise TypeError('For training mode, the `train_config` must be a '
                    'train_pb2.TrainConfig.')
  if not isinstance(train_input_config, input_reader_pb2.InputReader):
    raise TypeError('The `train_input_config` must be a '
                    'input_reader_pb2.InputReader.')
  if not isinstance(model_config, model_pb2.DetectionModel):
    raise TypeError('The `model_config` must be a '
                    'model_pb2.DetectionModel.')

  if model is None:
    model_preprocess_fn = INPUT_BUILDER_UTIL_MAP['model_build'](
        model_config, is_training=True).preprocess
  else:
    model_preprocess_fn = model.preprocess

861 862
  num_classes = config_util.get_number_of_classes(model_config)

863 864 865 866 867 868 869 870 871 872 873 874
  def transform_and_pad_input_data_fn(tensor_dict):
    """Combines transform and pad operation."""
    data_augmentation_options = [
        preprocessor_builder.build(step)
        for step in train_config.data_augmentation_options
    ]
    data_augmentation_fn = functools.partial(
        augment_input_data,
        data_augmentation_options=data_augmentation_options)

    image_resizer_config = config_util.get_image_resizer_config(model_config)
    image_resizer_fn = image_resizer_builder.build(image_resizer_config)
875
    keypoint_type_weight = train_input_config.keypoint_type_weight or None
876 877 878
    transform_data_fn = functools.partial(
        transform_input_data, model_preprocess_fn=model_preprocess_fn,
        image_resizer_fn=image_resizer_fn,
879
        num_classes=num_classes,
880 881 882 883
        data_augmentation_fn=data_augmentation_fn,
        merge_multiple_boxes=train_config.merge_multiple_label_boxes,
        retain_original_image=train_config.retain_original_images,
        use_multiclass_scores=train_config.use_multiclass_scores,
884 885
        use_bfloat16=train_config.use_bfloat16,
        keypoint_type_weight=keypoint_type_weight)
886 887 888 889

    tensor_dict = pad_input_data_to_static_shapes(
        tensor_dict=transform_data_fn(tensor_dict),
        max_num_boxes=train_input_config.max_number_of_boxes,
890
        num_classes=num_classes,
891
        spatial_image_shape=config_util.get_spatial_image_size(
892 893 894 895 896 897 898 899
            image_resizer_config),
        max_num_context_features=config_util.get_max_num_context_features(
            model_config),
        context_feature_length=config_util.get_context_feature_length(
            model_config))
    include_source_id = train_input_config.include_source_id
    return (_get_features_dict(tensor_dict, include_source_id),
            _get_labels_dict(tensor_dict))
900
  reduce_to_frame_fn = get_reduce_to_frame_fn(train_input_config, True)
901 902 903 904

  dataset = INPUT_BUILDER_UTIL_MAP['dataset_build'](
      train_input_config,
      transform_input_data_fn=transform_and_pad_input_data_fn,
905
      batch_size=params['batch_size'] if params else train_config.batch_size,
906 907
      input_context=input_context,
      reduce_to_frame_fn=reduce_to_frame_fn)
908
  return dataset
909 910


911
def create_eval_input_fn(eval_config, eval_input_config, model_config):
912 913 914 915 916
  """Creates an eval `input` function for `Estimator`.

  Args:
    eval_config: An eval_pb2.EvalConfig.
    eval_input_config: An input_reader_pb2.InputReader.
917
    model_config: A model_pb2.DetectionModel.
918 919 920 921 922

  Returns:
    `input_fn` for `Estimator` in EVAL mode.
  """

923
  def _eval_input_fn(params=None):
924 925
    return eval_input(eval_config, eval_input_config, model_config,
                      params=params)
926

927
  return _eval_input_fn
928

929

930
def eval_input(eval_config, eval_input_config, model_config,
931
               model=None, params=None, input_context=None):
932 933 934 935 936 937 938 939 940
  """Returns `features` and `labels` tensor dictionaries for evaluation.

  Args:
    eval_config: An eval_pb2.EvalConfig.
    eval_input_config: An input_reader_pb2.InputReader.
    model_config: A model_pb2.DetectionModel.
    model: A pre-constructed Detection Model.
      If None, one will be created from the config.
    params: Parameter dictionary passed from the estimator.
941 942 943
    input_context: optional, A tf.distribute.InputContext object used to
      shard filenames and compute per-replica batch_size when this function
      is being called per-replica.
944 945 946 947 948 949 950 951 952 953 954 955 956 957 958 959 960 961 962 963 964 965 966 967 968 969 970 971 972

  Returns:
    A tf.data.Dataset that holds (features, labels) tuple.

    features: Dictionary of feature tensors.
      features[fields.InputDataFields.image] is a [1, H, W, C] float32 tensor
        with preprocessed images.
      features[HASH_KEY] is a [1] int32 tensor representing unique
        identifiers for the images.
      features[fields.InputDataFields.true_image_shape] is a [1, 3]
        int32 tensor representing the true image shapes, as preprocessed
        images could be padded.
      features[fields.InputDataFields.original_image] is a [1, H', W', C]
        float32 tensor with the original image.
    labels: Dictionary of groundtruth tensors.
      labels[fields.InputDataFields.groundtruth_boxes] is a [1, num_boxes, 4]
        float32 tensor containing the corners of the groundtruth boxes.
      labels[fields.InputDataFields.groundtruth_classes] is a
        [num_boxes, num_classes] float32 one-hot tensor of classes.
      labels[fields.InputDataFields.groundtruth_area] is a [1, num_boxes]
        float32 tensor containing object areas.
      labels[fields.InputDataFields.groundtruth_is_crowd] is a [1, num_boxes]
        bool tensor indicating if the boxes enclose a crowd.
      labels[fields.InputDataFields.groundtruth_difficult] is a [1, num_boxes]
        int32 tensor indicating if the boxes represent difficult instances.
      -- Optional --
      labels[fields.InputDataFields.groundtruth_instance_masks] is a
        [1, num_boxes, H, W] float32 tensor containing only binary values,
        which represent instance masks for objects.
973 974 975
      labels[fields.InputDataFields.groundtruth_instance_mask_weights] is a
        [1, num_boxes] float32 tensor containing groundtruth weights for each
        instance mask.
976 977 978 979 980 981
      labels[fields.InputDataFields.groundtruth_weights] is a
        [batch_size, num_boxes, num_keypoints] float32 tensor containing
        groundtruth weights for the keypoints.
      labels[fields.InputDataFields.groundtruth_visibilities] is a
        [batch_size, num_boxes, num_keypoints] bool tensor containing
        groundtruth visibilities for each keypoint.
982 983 984 985 986
      labels[fields.InputDataFields.groundtruth_group_of] is a [1, num_boxes]
        bool tensor indicating if the box covers more than 5 instances of the
        same class which heavily occlude each other.
      labels[fields.InputDataFields.groundtruth_labeled_classes] is a
        [num_boxes, num_classes] float32 k-hot tensor of classes.
987 988 989 990 991 992 993 994 995 996 997
      labels[fields.InputDataFields.groundtruth_dp_num_points] is a
        [batch_size, num_boxes] int32 tensor with the number of sampled
        DensePose points per object.
      labels[fields.InputDataFields.groundtruth_dp_part_ids] is a
        [batch_size, num_boxes, max_sampled_points] int32 tensor with the
        DensePose part ids (0-indexed) per object.
      labels[fields.InputDataFields.groundtruth_dp_surface_coords] is a
        [batch_size, num_boxes, max_sampled_points, 4] float32 tensor with the
        DensePose surface coordinates. The format is (y, x, v, u), where (y, x)
        are normalized image coordinates and (v, u) are normalized surface part
        coordinates.
998 999
      labels[fields.InputDataFields.groundtruth_track_ids] is a
        [batch_size, num_boxes] int32 tensor with the track ID for each object.
1000 1001 1002 1003 1004 1005 1006 1007 1008 1009 1010 1011 1012 1013 1014 1015

  Raises:
    TypeError: if the `eval_config`, `eval_input_config` or `model_config`
      are not of the correct type.
  """
  params = params or {}
  if not isinstance(eval_config, eval_pb2.EvalConfig):
    raise TypeError('For eval mode, the `eval_config` must be a '
                    'train_pb2.EvalConfig.')
  if not isinstance(eval_input_config, input_reader_pb2.InputReader):
    raise TypeError('The `eval_input_config` must be a '
                    'input_reader_pb2.InputReader.')
  if not isinstance(model_config, model_pb2.DetectionModel):
    raise TypeError('The `model_config` must be a '
                    'model_pb2.DetectionModel.')

1016 1017 1018 1019 1020 1021 1022 1023
  if eval_config.force_no_resize:
    arch = model_config.WhichOneof('model')
    arch_config = getattr(model_config, arch)
    image_resizer_proto = image_resizer_pb2.ImageResizer()
    image_resizer_proto.identity_resizer.CopyFrom(
        image_resizer_pb2.IdentityResizer())
    arch_config.image_resizer.CopyFrom(image_resizer_proto)

1024 1025 1026 1027 1028 1029 1030 1031 1032 1033 1034 1035
  if model is None:
    model_preprocess_fn = INPUT_BUILDER_UTIL_MAP['model_build'](
        model_config, is_training=False).preprocess
  else:
    model_preprocess_fn = model.preprocess

  def transform_and_pad_input_data_fn(tensor_dict):
    """Combines transform and pad operation."""
    num_classes = config_util.get_number_of_classes(model_config)

    image_resizer_config = config_util.get_image_resizer_config(model_config)
    image_resizer_fn = image_resizer_builder.build(image_resizer_config)
1036
    keypoint_type_weight = eval_input_config.keypoint_type_weight or None
1037 1038 1039 1040 1041 1042

    transform_data_fn = functools.partial(
        transform_input_data, model_preprocess_fn=model_preprocess_fn,
        image_resizer_fn=image_resizer_fn,
        num_classes=num_classes,
        data_augmentation_fn=None,
1043 1044
        retain_original_image=eval_config.retain_original_images,
        retain_original_image_additional_channels=
1045 1046
        eval_config.retain_original_image_additional_channels,
        keypoint_type_weight=keypoint_type_weight)
1047 1048 1049 1050 1051
    tensor_dict = pad_input_data_to_static_shapes(
        tensor_dict=transform_data_fn(tensor_dict),
        max_num_boxes=eval_input_config.max_number_of_boxes,
        num_classes=config_util.get_number_of_classes(model_config),
        spatial_image_shape=config_util.get_spatial_image_size(
1052 1053 1054 1055 1056 1057 1058 1059
            image_resizer_config),
        max_num_context_features=config_util.get_max_num_context_features(
            model_config),
        context_feature_length=config_util.get_context_feature_length(
            model_config))
    include_source_id = eval_input_config.include_source_id
    return (_get_features_dict(tensor_dict, include_source_id),
            _get_labels_dict(tensor_dict))
1060 1061 1062

  reduce_to_frame_fn = get_reduce_to_frame_fn(eval_input_config, False)

1063 1064 1065
  dataset = INPUT_BUILDER_UTIL_MAP['dataset_build'](
      eval_input_config,
      batch_size=params['batch_size'] if params else eval_config.batch_size,
1066
      transform_input_data_fn=transform_and_pad_input_data_fn,
1067
      input_context=input_context,
1068
      reduce_to_frame_fn=reduce_to_frame_fn)
1069
  return dataset
1070 1071


1072
def create_predict_input_fn(model_config, predict_input_config):
1073 1074
  """Creates a predict `input` function for `Estimator`.

1075 1076
  Args:
    model_config: A model_pb2.DetectionModel.
1077
    predict_input_config: An input_reader_pb2.InputReader.
1078

1079 1080 1081 1082
  Returns:
    `input_fn` for `Estimator` in PREDICT mode.
  """

1083
  def _predict_input_fn(params=None):
1084 1085
    """Decodes serialized tf.Examples and returns `ServingInputReceiver`.

1086 1087 1088
    Args:
      params: Parameter dictionary passed from the estimator.

1089 1090 1091
    Returns:
      `ServingInputReceiver`.
    """
1092
    del params
1093
    example = tf.placeholder(dtype=tf.string, shape=[], name='tf_example')
1094

1095
    num_classes = config_util.get_number_of_classes(model_config)
1096 1097 1098
    model_preprocess_fn = INPUT_BUILDER_UTIL_MAP['model_build'](
        model_config, is_training=False).preprocess

1099 1100
    image_resizer_config = config_util.get_image_resizer_config(model_config)
    image_resizer_fn = image_resizer_builder.build(image_resizer_config)
1101

1102
    transform_fn = functools.partial(
1103
        transform_input_data, model_preprocess_fn=model_preprocess_fn,
1104 1105 1106 1107
        image_resizer_fn=image_resizer_fn,
        num_classes=num_classes,
        data_augmentation_fn=None)

1108 1109 1110
    decoder = tf_example_decoder.TfExampleDecoder(
        load_instance_masks=False,
        num_additional_channels=predict_input_config.num_additional_channels)
1111
    input_dict = transform_fn(decoder.decode(example))
1112
    images = tf.cast(input_dict[fields.InputDataFields.image], dtype=tf.float32)
1113
    images = tf.expand_dims(images, axis=0)
1114 1115
    true_image_shape = tf.expand_dims(
        input_dict[fields.InputDataFields.true_image_shape], axis=0)
1116 1117

    return tf.estimator.export.ServingInputReceiver(
1118 1119 1120
        features={
            fields.InputDataFields.image: images,
            fields.InputDataFields.true_image_shape: true_image_shape},
1121 1122 1123
        receiver_tensors={SERVING_FED_EXAMPLE_KEY: example})

  return _predict_input_fn
1124 1125 1126 1127 1128 1129 1130 1131 1132 1133 1134 1135 1136 1137 1138 1139 1140 1141 1142 1143 1144


def get_reduce_to_frame_fn(input_reader_config, is_training):
  """Returns a function reducing sequence tensors to single frame tensors.

  If the input type is not TF_SEQUENCE_EXAMPLE, the tensors are passed through
  this function unchanged. Otherwise, when in training mode, a single frame is
  selected at random from the sequence example, and the tensors for that frame
  are converted to single frame tensors, with all associated context features.
  In evaluation mode all frames are converted to single frame tensors with
  copied context tensors. After the sequence example tensors are converted into
  one or many single frame tensors, the images from each frame are decoded.

  Args:
    input_reader_config: An input_reader_pb2.InputReader.
    is_training: Whether we are in training mode.

  Returns:
    `reduce_to_frame_fn` for the dataset builder
  """
  if input_reader_config.input_type != (
1145 1146
      input_reader_pb2.InputType.Value('TF_SEQUENCE_EXAMPLE')):
    return lambda dataset, dataset_map_fn, batch_size, config: dataset
1147
  else:
1148 1149
    def reduce_to_frame(dataset, dataset_map_fn, batch_size,
                        input_reader_config):
1150 1151 1152 1153
      """Returns a function reducing sequence tensors to single frame tensors.

      Args:
        dataset: A tf dataset containing sequence tensors.
1154 1155 1156 1157 1158 1159
        dataset_map_fn: A function that handles whether to
          map_with_legacy_function for this dataset
        batch_size: used if map_with_legacy_function is true to determine
          num_parallel_calls
        input_reader_config: used if map_with_legacy_function is true to
          determine num_parallel_calls
1160 1161 1162 1163 1164 1165 1166 1167 1168 1169 1170 1171 1172 1173 1174 1175 1176 1177 1178 1179 1180

      Returns:
        A tf dataset containing single frame tensors.
      """
      if is_training:
        def get_single_frame(tensor_dict):
          """Returns a random frame from a sequence.

          Picks a random frame and returns slices of sequence tensors
          corresponding to the random frame. Returns non-sequence tensors
          unchanged.

          Args:
            tensor_dict: A dictionary containing sequence tensors.

          Returns:
            Tensors for a single random frame within the sequence.
          """
          num_frames = tf.cast(
              tf.shape(tensor_dict[fields.InputDataFields.source_id])[0],
              dtype=tf.int32)
1181 1182 1183 1184 1185 1186
          if input_reader_config.frame_index == -1:
            frame_index = tf.random.uniform((), minval=0, maxval=num_frames,
                                            dtype=tf.int32)
          else:
            frame_index = tf.constant(input_reader_config.frame_index,
                                      dtype=tf.int32)
1187 1188 1189 1190 1191 1192 1193 1194 1195
          out_tensor_dict = {}
          for key in tensor_dict:
            if key in fields.SEQUENCE_FIELDS:
              # Slice random frame from sequence tensors
              out_tensor_dict[key] = tensor_dict[key][frame_index]
            else:
              # Copy all context tensors.
              out_tensor_dict[key] = tensor_dict[key]
          return out_tensor_dict
1196 1197
        dataset = dataset_map_fn(dataset, get_single_frame, batch_size,
                                 input_reader_config)
1198
      else:
1199 1200
        dataset = dataset_map_fn(dataset, util_ops.tile_context_tensors,
                                 batch_size, input_reader_config)
1201 1202
        dataset = dataset.unbatch()
      # Decode frame here as SequenceExample tensors contain encoded images.
1203 1204
      dataset = dataset_map_fn(dataset, util_ops.decode_image, batch_size,
                               input_reader_config)
1205 1206
      return dataset
    return reduce_to_frame