inputs.py 30.9 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 23 24
# 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

import tensorflow as tf
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
from object_detection.core import preprocessor
29 30 31 32
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
from object_detection.protos import input_reader_pb2
33
from object_detection.protos import model_pb2
34
from object_detection.protos import train_pb2
35
from object_detection.utils import config_util
36
from object_detection.utils import ops as util_ops
37
from object_detection.utils import shape_utils
38

39 40
HASH_KEY = 'hash'
HASH_BINS = 1 << 31
41 42
SERVING_FED_EXAMPLE_KEY = 'serialized_example'

43 44 45
# A map of names to methods that help build the input pipeline.
INPUT_BUILDER_UTIL_MAP = {
    'dataset_build': dataset_builder.build,
46
    'model_build': model_builder.build,
47 48
}

49

P
pkulzc 已提交
50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65
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)


66 67 68 69 70 71
def transform_input_data(tensor_dict,
                         model_preprocess_fn,
                         image_resizer_fn,
                         num_classes,
                         data_augmentation_fn=None,
                         merge_multiple_boxes=False,
72
                         retain_original_image=False,
73
                         use_multiclass_scores=False,
74
                         use_bfloat16=False):
75 76 77
  """A single function that is responsible for all input data transformations.

  Data transformation functions are applied in the following order.
78 79 80 81 82 83
  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.
  4. image_resizer_fn: applied on original image and instance mask tensor in
84
     tensor_dict.
85 86
  5. one_hot_encoding: applied to classes tensor in tensor_dict.
  6. merge_multiple_boxes (optional): when groundtruth boxes are exactly the
87 88 89 90 91 92 93 94 95
     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.
96 97 98 99
    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.
100 101 102 103 104 105 106 107
    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
108 109 110 111
    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.
112
    use_bfloat16: (optional) a bool, whether to use bfloat16 in training.
113 114 115 116 117

  Returns:
    A dictionary keyed by fields.InputDataFields containing the tensors obtained
    after applying all the transformations.
  """
P
pkulzc 已提交
118 119 120 121 122 123 124 125 126 127 128 129 130 131
  out_tensor_dict = tensor_dict.copy()
  if fields.InputDataFields.multiclass_scores in out_tensor_dict:
    out_tensor_dict[
        fields.InputDataFields
        .multiclass_scores] = _multiclass_scores_or_one_hot_labels(
            out_tensor_dict[fields.InputDataFields.multiclass_scores],
            out_tensor_dict[fields.InputDataFields.groundtruth_boxes],
            out_tensor_dict[fields.InputDataFields.groundtruth_classes],
            num_classes)

  if fields.InputDataFields.groundtruth_boxes in out_tensor_dict:
    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)
132

133
  if retain_original_image:
P
pkulzc 已提交
134 135 136
    out_tensor_dict[fields.InputDataFields.original_image] = tf.cast(
        image_resizer_fn(out_tensor_dict[fields.InputDataFields.image],
                         None)[0], tf.uint8)
137

P
pkulzc 已提交
138 139 140 141
  if fields.InputDataFields.image_additional_channels in out_tensor_dict:
    channels = out_tensor_dict[fields.InputDataFields.image_additional_channels]
    out_tensor_dict[fields.InputDataFields.image] = tf.concat(
        [out_tensor_dict[fields.InputDataFields.image], channels], axis=2)
142

143 144
  # Apply data augmentation ops.
  if data_augmentation_fn is not None:
P
pkulzc 已提交
145
    out_tensor_dict = data_augmentation_fn(out_tensor_dict)
146 147

  # Apply model preprocessing ops and resize instance masks.
P
pkulzc 已提交
148
  image = out_tensor_dict[fields.InputDataFields.image]
149
  preprocessed_resized_image, true_image_shape = model_preprocess_fn(
150
      tf.expand_dims(tf.cast(image, dtype=tf.float32), axis=0))
151 152 153
  if use_bfloat16:
    preprocessed_resized_image = tf.cast(
        preprocessed_resized_image, tf.bfloat16)
P
pkulzc 已提交
154
  out_tensor_dict[fields.InputDataFields.image] = tf.squeeze(
155
      preprocessed_resized_image, axis=0)
P
pkulzc 已提交
156
  out_tensor_dict[fields.InputDataFields.true_image_shape] = tf.squeeze(
157
      true_image_shape, axis=0)
P
pkulzc 已提交
158 159
  if fields.InputDataFields.groundtruth_instance_masks in out_tensor_dict:
    masks = out_tensor_dict[fields.InputDataFields.groundtruth_instance_masks]
160
    _, resized_masks, _ = image_resizer_fn(image, masks)
P
pkulzc 已提交
161 162
    if use_bfloat16:
      resized_masks = tf.cast(resized_masks, tf.bfloat16)
P
pkulzc 已提交
163 164
    out_tensor_dict[
        fields.InputDataFields.groundtruth_instance_masks] = resized_masks
165 166

  label_offset = 1
P
pkulzc 已提交
167
  zero_indexed_groundtruth_classes = out_tensor_dict[
168
      fields.InputDataFields.groundtruth_classes] - label_offset
169
  if use_multiclass_scores:
P
pkulzc 已提交
170 171 172 173 174 175 176
    out_tensor_dict[
        fields.InputDataFields.groundtruth_classes] = out_tensor_dict[
            fields.InputDataFields.multiclass_scores]
  else:
    out_tensor_dict[fields.InputDataFields.groundtruth_classes] = tf.one_hot(
        zero_indexed_groundtruth_classes, num_classes)
  out_tensor_dict.pop(fields.InputDataFields.multiclass_scores, None)
177

P
pkulzc 已提交
178 179
  if fields.InputDataFields.groundtruth_confidences in out_tensor_dict:
    groundtruth_confidences = out_tensor_dict[
180
        fields.InputDataFields.groundtruth_confidences]
181
    # Map the confidences to the one-hot encoding of classes
P
pkulzc 已提交
182
    out_tensor_dict[fields.InputDataFields.groundtruth_confidences] = (
183
        tf.reshape(groundtruth_confidences, [-1, 1]) *
P
pkulzc 已提交
184
        out_tensor_dict[fields.InputDataFields.groundtruth_classes])
185 186 187
  else:
    groundtruth_confidences = tf.ones_like(
        zero_indexed_groundtruth_classes, dtype=tf.float32)
P
pkulzc 已提交
188 189
    out_tensor_dict[fields.InputDataFields.groundtruth_confidences] = (
        out_tensor_dict[fields.InputDataFields.groundtruth_classes])
190

191
  if merge_multiple_boxes:
192 193
    merged_boxes, merged_classes, merged_confidences, _ = (
        util_ops.merge_boxes_with_multiple_labels(
P
pkulzc 已提交
194
            out_tensor_dict[fields.InputDataFields.groundtruth_boxes],
195 196 197
            zero_indexed_groundtruth_classes,
            groundtruth_confidences,
            num_classes))
198
    merged_classes = tf.cast(merged_classes, tf.float32)
P
pkulzc 已提交
199 200 201
    out_tensor_dict[fields.InputDataFields.groundtruth_boxes] = merged_boxes
    out_tensor_dict[fields.InputDataFields.groundtruth_classes] = merged_classes
    out_tensor_dict[fields.InputDataFields.groundtruth_confidences] = (
202
        merged_confidences)
P
pkulzc 已提交
203 204 205
  if fields.InputDataFields.groundtruth_boxes in out_tensor_dict:
    out_tensor_dict[fields.InputDataFields.num_groundtruth_boxes] = tf.shape(
        out_tensor_dict[fields.InputDataFields.groundtruth_boxes])[0]
206

P
pkulzc 已提交
207
  return out_tensor_dict
208 209


210 211 212 213
def pad_input_data_to_static_shapes(tensor_dict, max_num_boxes, num_classes,
                                    spatial_image_shape=None):
  """Pads input tensors to static shapes.

214 215 216
  In case num_additional_channels > 0, we assume that the additional channels
  have already been concatenated to the base image.

217 218 219 220 221 222 223 224 225 226 227 228 229 230
  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.

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

  Raises:
231 232
    ValueError: If groundtruth classes is neither rank 1 nor rank 2, or if we
      detect that additional channels have not been concatenated yet.
233 234 235 236 237 238 239 240 241
  """

  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

  num_additional_channels = 0
  if fields.InputDataFields.image_additional_channels in tensor_dict:
242 243
    num_additional_channels = shape_utils.get_dim_as_int(tensor_dict[
        fields.InputDataFields.image_additional_channels].shape[2])
244 245 246 247

  # 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
248
  if fields.InputDataFields.image in tensor_dict:
249 250
    num_channels = shape_utils.get_dim_as_int(
        tensor_dict[fields.InputDataFields.image].shape[2])
251 252 253 254 255 256 257

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

    if (fields.InputDataFields.original_image in tensor_dict and
258 259
        shape_utils.get_dim_as_int(
            tensor_dict[fields.InputDataFields.original_image].shape[2]) ==
260 261 262 263
        num_channels):
      raise ValueError(
          'Image must be already concatenated with additional channels.')

264 265
  padding_shapes = {
      fields.InputDataFields.image: [
266
          height, width, num_channels
267
      ],
P
pkulzc 已提交
268
      fields.InputDataFields.original_image_spatial_shape: [2],
269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284
      fields.InputDataFields.image_additional_channels: [
          height, width, num_additional_channels
      ],
      fields.InputDataFields.source_id: [],
      fields.InputDataFields.filename: [],
      fields.InputDataFields.key: [],
      fields.InputDataFields.groundtruth_difficult: [max_num_boxes],
      fields.InputDataFields.groundtruth_boxes: [max_num_boxes, 4],
      fields.InputDataFields.groundtruth_classes: [max_num_boxes, num_classes],
      fields.InputDataFields.groundtruth_instance_masks: [
          max_num_boxes, height, width
      ],
      fields.InputDataFields.groundtruth_is_crowd: [max_num_boxes],
      fields.InputDataFields.groundtruth_group_of: [max_num_boxes],
      fields.InputDataFields.groundtruth_area: [max_num_boxes],
      fields.InputDataFields.groundtruth_weights: [max_num_boxes],
285 286 287
      fields.InputDataFields.groundtruth_confidences: [
          max_num_boxes, num_classes
      ],
288 289
      fields.InputDataFields.num_groundtruth_boxes: [],
      fields.InputDataFields.groundtruth_label_types: [max_num_boxes],
290
      fields.InputDataFields.groundtruth_label_weights: [max_num_boxes],
291 292
      fields.InputDataFields.true_image_shape: [3],
      fields.InputDataFields.groundtruth_image_classes: [num_classes],
293
      fields.InputDataFields.groundtruth_image_confidences: [num_classes],
294 295 296 297
  }

  if fields.InputDataFields.original_image in tensor_dict:
    padding_shapes[fields.InputDataFields.original_image] = [
298 299 300
        height, width,
        shape_utils.get_dim_as_int(tensor_dict[fields.InputDataFields.
                                               original_image].shape[2])
301 302 303 304
    ]
  if fields.InputDataFields.groundtruth_keypoints in tensor_dict:
    tensor_shape = (
        tensor_dict[fields.InputDataFields.groundtruth_keypoints].shape)
305 306 307
    padding_shape = [max_num_boxes,
                     shape_utils.get_dim_as_int(tensor_shape[1]),
                     shape_utils.get_dim_as_int(tensor_shape[2])]
308 309 310 311
    padding_shapes[fields.InputDataFields.groundtruth_keypoints] = padding_shape
  if fields.InputDataFields.groundtruth_keypoint_visibilities in tensor_dict:
    tensor_shape = tensor_dict[fields.InputDataFields.
                               groundtruth_keypoint_visibilities].shape
312
    padding_shape = [max_num_boxes, shape_utils.get_dim_as_int(tensor_shape[1])]
313 314 315 316 317
    padding_shapes[fields.InputDataFields.
                   groundtruth_keypoint_visibilities] = padding_shape

  padded_tensor_dict = {}
  for tensor_name in tensor_dict:
318 319
    padded_tensor_dict[tensor_name] = shape_utils.pad_or_clip_nd(
        tensor_dict[tensor_name], padding_shapes[tensor_name])
320 321 322 323 324 325 326 327

  # Make sure that the number of groundtruth boxes now reflects the
  # padded/clipped tensors.
  if fields.InputDataFields.num_groundtruth_boxes in padded_tensor_dict:
    padded_tensor_dict[fields.InputDataFields.num_groundtruth_boxes] = (
        tf.minimum(
            padded_tensor_dict[fields.InputDataFields.num_groundtruth_boxes],
            max_num_boxes))
328 329 330
  return padded_tensor_dict


331 332 333 334 335 336 337 338 339 340 341 342 343 344
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(
345
      tf.cast(tensor_dict[fields.InputDataFields.image], dtype=tf.float32), 0)
346 347 348 349 350

  include_instance_masks = (fields.InputDataFields.groundtruth_instance_masks
                            in tensor_dict)
  include_keypoints = (fields.InputDataFields.groundtruth_keypoints
                       in tensor_dict)
351 352 353 354
  include_label_weights = (fields.InputDataFields.groundtruth_weights
                           in tensor_dict)
  include_label_confidences = (fields.InputDataFields.groundtruth_confidences
                               in tensor_dict)
355 356
  include_multiclass_scores = (fields.InputDataFields.multiclass_scores in
                               tensor_dict)
357 358 359
  tensor_dict = preprocessor.preprocess(
      tensor_dict, data_augmentation_options,
      func_arg_map=preprocessor.get_default_func_arg_map(
360 361
          include_label_weights=include_label_weights,
          include_label_confidences=include_label_confidences,
362
          include_multiclass_scores=include_multiclass_scores,
363 364 365 366 367 368 369
          include_instance_masks=include_instance_masks,
          include_keypoints=include_keypoints))
  tensor_dict[fields.InputDataFields.image] = tf.squeeze(
      tensor_dict[fields.InputDataFields.image], axis=0)
  return tensor_dict


370 371 372 373 374 375
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,
376
      fields.InputDataFields.groundtruth_weights,
377 378 379 380 381 382
  ]
  labels_dict = {}
  for key in required_label_keys:
    labels_dict[key] = input_dict[key]

  optional_label_keys = [
383
      fields.InputDataFields.groundtruth_confidences,
384 385 386 387 388 389 390 391 392 393 394 395 396 397 398 399
      fields.InputDataFields.groundtruth_keypoints,
      fields.InputDataFields.groundtruth_instance_masks,
      fields.InputDataFields.groundtruth_area,
      fields.InputDataFields.groundtruth_is_crowd,
      fields.InputDataFields.groundtruth_difficult
  ]

  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


400 401 402 403 404 405 406 407 408 409 410 411 412 413 414 415 416 417 418 419 420 421 422 423 424 425 426 427 428
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


429 430
def _get_features_dict(input_dict):
  """Extracts features dict from input dict."""
431 432 433 434 435

  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)
436 437 438 439 440
  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
441 442 443
          input_dict[fields.InputDataFields.true_image_shape],
      fields.InputDataFields.original_image_spatial_shape:
          input_dict[fields.InputDataFields.original_image_spatial_shape]
444 445 446 447 448 449 450
  }
  if fields.InputDataFields.original_image in input_dict:
    features[fields.InputDataFields.original_image] = input_dict[
        fields.InputDataFields.original_image]
  return features


451 452
def create_train_input_fn(train_config, train_input_config,
                          model_config):
453 454 455 456 457
  """Creates a train `input` function for `Estimator`.

  Args:
    train_config: A train_pb2.TrainConfig.
    train_input_config: An input_reader_pb2.InputReader.
458
    model_config: A model_pb2.DetectionModel.
459 460 461 462 463

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

464
  def _train_input_fn(params=None):
465 466
    return train_input(train_config, train_input_config, model_config,
                       params=params)
467

468
  return _train_input_fn
469

470

471 472 473 474 475 476 477 478 479 480 481 482 483 484 485 486 487 488 489 490 491 492 493 494 495 496 497 498 499 500 501 502 503 504 505 506 507 508 509 510 511 512 513 514 515 516 517 518 519 520 521 522 523 524 525 526 527 528 529 530 531 532 533 534 535 536 537 538 539 540 541 542 543 544 545 546 547 548 549 550 551 552 553 554 555 556 557 558 559 560 561 562 563 564 565 566 567 568 569 570
def train_input(train_config, train_input_config,
                model_config, model=None, params=None):
  """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.

  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.
      labels[fields.InputDataFields.groundtruth_keypoints] is a
        [batch_size, num_boxes, num_keypoints, 2] float32 tensor containing
        keypoints for each box.

  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

  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)
    transform_data_fn = functools.partial(
        transform_input_data, model_preprocess_fn=model_preprocess_fn,
        image_resizer_fn=image_resizer_fn,
        num_classes=config_util.get_number_of_classes(model_config),
        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,
        use_bfloat16=train_config.use_bfloat16)

    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,
        num_classes=config_util.get_number_of_classes(model_config),
        spatial_image_shape=config_util.get_spatial_image_size(
            image_resizer_config))
    return (_get_features_dict(tensor_dict), _get_labels_dict(tensor_dict))

  dataset = INPUT_BUILDER_UTIL_MAP['dataset_build'](
      train_input_config,
      transform_input_data_fn=transform_and_pad_input_data_fn,
      batch_size=params['batch_size'] if params else train_config.batch_size)
  return dataset
571 572


573
def create_eval_input_fn(eval_config, eval_input_config, model_config):
574 575 576 577 578
  """Creates an eval `input` function for `Estimator`.

  Args:
    eval_config: An eval_pb2.EvalConfig.
    eval_input_config: An input_reader_pb2.InputReader.
579
    model_config: A model_pb2.DetectionModel.
580 581 582 583 584

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

585
  def _eval_input_fn(params=None):
586 587
    return eval_input(eval_config, eval_input_config, model_config,
                      params=params)
588

589
  return _eval_input_fn
590

591

592 593 594 595 596 597 598 599 600 601 602 603 604 605 606 607 608 609 610 611 612 613 614 615 616 617 618 619 620 621 622 623 624 625 626 627 628 629 630 631 632 633 634 635 636 637 638 639 640 641 642 643 644 645 646 647 648 649 650 651 652 653 654 655 656 657 658 659 660 661 662 663 664 665 666 667 668 669 670 671 672 673 674 675 676 677 678
def eval_input(eval_config, eval_input_config, model_config,
               model=None, params=None):
  """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.

  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.

  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.')

  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)

    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,
        retain_original_image=eval_config.retain_original_images)
    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(
            image_resizer_config))
    return (_get_features_dict(tensor_dict), _get_labels_dict(tensor_dict))
  dataset = INPUT_BUILDER_UTIL_MAP['dataset_build'](
      eval_input_config,
      batch_size=params['batch_size'] if params else eval_config.batch_size,
      transform_input_data_fn=transform_and_pad_input_data_fn)
  return dataset
679 680


681
def create_predict_input_fn(model_config, predict_input_config):
682 683
  """Creates a predict `input` function for `Estimator`.

684 685
  Args:
    model_config: A model_pb2.DetectionModel.
686
    predict_input_config: An input_reader_pb2.InputReader.
687

688 689 690 691
  Returns:
    `input_fn` for `Estimator` in PREDICT mode.
  """

692
  def _predict_input_fn(params=None):
693 694
    """Decodes serialized tf.Examples and returns `ServingInputReceiver`.

695 696 697
    Args:
      params: Parameter dictionary passed from the estimator.

698 699 700
    Returns:
      `ServingInputReceiver`.
    """
701
    del params
702
    example = tf.placeholder(dtype=tf.string, shape=[], name='tf_example')
703

704
    num_classes = config_util.get_number_of_classes(model_config)
705 706 707
    model_preprocess_fn = INPUT_BUILDER_UTIL_MAP['model_build'](
        model_config, is_training=False).preprocess

708 709
    image_resizer_config = config_util.get_image_resizer_config(model_config)
    image_resizer_fn = image_resizer_builder.build(image_resizer_config)
710

711
    transform_fn = functools.partial(
712
        transform_input_data, model_preprocess_fn=model_preprocess_fn,
713 714 715 716
        image_resizer_fn=image_resizer_fn,
        num_classes=num_classes,
        data_augmentation_fn=None)

717 718 719
    decoder = tf_example_decoder.TfExampleDecoder(
        load_instance_masks=False,
        num_additional_channels=predict_input_config.num_additional_channels)
720
    input_dict = transform_fn(decoder.decode(example))
721
    images = tf.cast(input_dict[fields.InputDataFields.image], dtype=tf.float32)
722
    images = tf.expand_dims(images, axis=0)
723 724
    true_image_shape = tf.expand_dims(
        input_dict[fields.InputDataFields.true_image_shape], axis=0)
725 726

    return tf.estimator.export.ServingInputReceiver(
727 728 729
        features={
            fields.InputDataFields.image: images,
            fields.InputDataFields.true_image_shape: true_image_shape},
730 731 732
        receiver_tensors={SERVING_FED_EXAMPLE_KEY: example})

  return _predict_input_fn