提交 8308f332 编写于 作者: T tink2123

fix conflicts

Global:
use_gpu: True
epoch_num: 400
log_smooth_window: 20
print_batch_step: 10
save_model_dir: ./output/rec/seed
save_epoch_step: 3
# evaluation is run every 5000 iterations after the 4000th iteration
eval_batch_step: [0, 2000]
cal_metric_during_train: True
pretrained_model:
checkpoints:
save_inference_dir:
use_visualdl: False
infer_img: doc/imgs_words_en/word_10.png
# for data or label process
character_dict_path:
character_type: EN_symbol
max_text_length: 100
infer_mode: False
use_space_char: False
eval_filter: True
save_res_path: ./output/rec/predicts_seed.txt
Optimizer:
name: Adadelta
weight_deacy: 0.0
momentum: 0.9
lr:
name: Piecewise
decay_epochs: [4,5,8]
values: [1.0, 0.1, 0.01]
regularizer:
name: 'L2'
factor: 2.0e-05
Architecture:
model_type: seed
algorithm: ASTER
Transform:
name: STN_ON
tps_inputsize: [32, 64]
tps_outputsize: [32, 100]
num_control_points: 20
tps_margins: [0.05,0.05]
stn_activation: none
Backbone:
name: ResNet_ASTER
Head:
name: AsterHead # AttentionHead
sDim: 512
attDim: 512
max_len_labels: 100
Loss:
name: AsterLoss
PostProcess:
name: SEEDLabelDecode
Metric:
name: RecMetric
main_indicator: acc
is_filter: True
Train:
dataset:
name: LMDBDataSet
data_dir: ./train_data/data_lmdb_release/training/
transforms:
- Fasttext:
path: "./cc.en.300.bin"
- DecodeImage: # load image
img_mode: BGR
channel_first: False
- SEEDLabelEncode: # Class handling label
- SEEDResize:
image_shape: [3, 64, 256]
- KeepKeys:
keep_keys: ['image', 'label', 'length', 'fast_label'] # dataloader will return list in this order
loader:
shuffle: True
batch_size_per_card: 256
drop_last: True
num_workers: 6
Eval:
dataset:
name: LMDBDataSet
data_dir: ./train_data/data_lmdb_release/evaluation/
transforms:
- DecodeImage: # load image
img_mode: BGR
channel_first: False
- SEEDLabelEncode: # Class handling label
- SEEDResize:
image_shape: [3, 64, 256]
- KeepKeys:
keep_keys: ['image', 'label', 'length'] # dataloader will return list in this order
loader:
shuffle: False
drop_last: True
batch_size_per_card: 256
num_workers: 4
......@@ -21,7 +21,7 @@ from .make_border_map import MakeBorderMap
from .make_shrink_map import MakeShrinkMap
from .random_crop_data import EastRandomCropData, PSERandomCrop
from .rec_img_aug import RecAug, RecResizeImg, ClsResizeImg, SRNRecResizeImg, NRTRRecResizeImg, SARRecResizeImg
from .rec_img_aug import RecAug, RecResizeImg, ClsResizeImg, SRNRecResizeImg, NRTRRecResizeImg, SARRecResizeImg, SEEDResize
from .randaugment import RandAugment
from .copy_paste import CopyPaste
from .operators import *
......
......@@ -106,6 +106,7 @@ class BaseRecLabelEncode(object):
self.max_text_len = max_text_length
self.beg_str = "sos"
self.end_str = "eos"
self.unknown = "UNKNOWN"
if character_type == "en":
self.character_str = "0123456789abcdefghijklmnopqrstuvwxyz"
dict_character = list(self.character_str)
......@@ -174,6 +175,7 @@ class NRTRLabelEncode(BaseRecLabelEncode):
super(NRTRLabelEncode,
self).__init__(max_text_length, character_dict_path,
character_type, use_space_char)
def __call__(self, data):
text = data['label']
text = self.encode(text)
......@@ -185,10 +187,12 @@ class NRTRLabelEncode(BaseRecLabelEncode):
text = text + [0] * (self.max_text_len - len(text))
data['label'] = np.array(text)
return data
def add_special_char(self, dict_character):
dict_character = ['blank','<unk>','<s>','</s>'] + dict_character
dict_character = ['blank', '<unk>', '<s>', '</s>'] + dict_character
return dict_character
class CTCLabelEncode(BaseRecLabelEncode):
""" Convert between text-label and text-index """
......@@ -337,6 +341,39 @@ class AttnLabelEncode(BaseRecLabelEncode):
return idx
class SEEDLabelEncode(BaseRecLabelEncode):
""" Convert between text-label and text-index """
def __init__(self,
max_text_length,
character_dict_path=None,
character_type='ch',
use_space_char=False,
**kwargs):
super(SEEDLabelEncode,
self).__init__(max_text_length, character_dict_path,
character_type, use_space_char)
def add_special_char(self, dict_character):
self.beg_str = "sos"
self.end_str = "eos"
dict_character = dict_character + [self.end_str]
return dict_character
def __call__(self, data):
text = data['label']
text = self.encode(text)
if text is None:
return None
if len(text) >= self.max_text_len:
return None
data['length'] = np.array(len(text)) + 1 # conclue eos
text = text + [len(self.character) - 1] * (self.max_text_len - len(text)
)
data['label'] = np.array(text)
return data
class SRNLabelEncode(BaseRecLabelEncode):
""" Convert between text-label and text-index """
......@@ -416,7 +453,6 @@ class TableLabelEncode(object):
substr = lines[0].decode('utf-8').strip("\r\n").split("\t")
character_num = int(substr[0])
elem_num = int(substr[1])
for cno in range(1, 1 + character_num):
character = lines[cno].decode('utf-8').strip("\r\n")
list_character.append(character)
......
......@@ -23,6 +23,7 @@ import sys
import six
import cv2
import numpy as np
import fasttext
class DecodeImage(object):
......@@ -83,12 +84,13 @@ class NRTRDecodeImage(object):
elif self.img_mode == 'RGB':
assert img.shape[2] == 3, 'invalid shape of image[%s]' % (img.shape)
img = img[:, :, ::-1]
img = cv2.cvtColor(img,cv2.COLOR_BGR2GRAY)
img = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY)
if self.channel_first:
img = img.transpose((2, 0, 1))
data['image'] = img
return data
class NormalizeImage(object):
""" normalize image such as substract mean, divide std
"""
......@@ -133,6 +135,17 @@ class ToCHWImage(object):
return data
class Fasttext(object):
def __init__(self, path="None", **kwargs):
self.fast_model = fasttext.load_model(path)
def __call__(self, data):
label = data['label']
fast_label = self.fast_model[label]
data['fast_label'] = fast_label
return data
class KeepKeys(object):
def __init__(self, keep_keys, **kwargs):
self.keep_keys = keep_keys
......
......@@ -82,6 +82,18 @@ class RecResizeImg(object):
return data
class SEEDResize(object):
def __init__(self, image_shape, infer_mode=False, **kwargs):
self.image_shape = image_shape
self.infer_mode = infer_mode
def __call__(self, data):
img = data['image']
norm_img = resize_no_padding_img(img, self.image_shape)
data['image'] = norm_img
return data
class SRNRecResizeImg(object):
def __init__(self, image_shape, num_heads, max_text_length, **kwargs):
self.image_shape = image_shape
......@@ -109,7 +121,8 @@ class SARRecResizeImg(object):
def __call__(self, data):
img = data['image']
norm_img, resize_shape, pad_shape, valid_ratio = resize_norm_img_sar(img, self.image_shape, self.width_downsample_ratio)
norm_img, resize_shape, pad_shape, valid_ratio = resize_norm_img_sar(
img, self.image_shape, self.width_downsample_ratio)
data['image'] = norm_img
data['resized_shape'] = resize_shape
data['pad_shape'] = pad_shape
......@@ -175,6 +188,17 @@ def resize_norm_img(img, image_shape):
return padding_im
def resize_no_padding_img(img, image_shape):
imgC, imgH, imgW = image_shape
resized_image = cv2.resize(
img, (imgW, imgH), interpolation=cv2.INTER_LINEAR)
resized_image = resized_image.astype('float32')
resized_image = resized_image.transpose((2, 0, 1)) / 255
resized_image -= 0.5
resized_image /= 0.5
return resized_image
def resize_norm_img_chinese(img, image_shape):
imgC, imgH, imgW = image_shape
# todo: change to 0 and modified image shape
......
......@@ -42,10 +42,14 @@ from .combined_loss import CombinedLoss
# table loss
from .table_att_loss import TableAttentionLoss
from .rec_aster_loss import AsterLoss
def build_loss(config):
support_dict = [
'DBLoss', 'EASTLoss', 'SASTLoss', 'CTCLoss', 'ClsLoss', 'AttentionLoss',
'SRNLoss', 'PGLoss', 'CombinedLoss', 'NRTRLoss', 'TableAttentionLoss', 'SARLoss'
'SRNLoss', 'PGLoss', 'CombinedLoss', 'NRTRLoss', 'TableAttentionLoss',
'SARLoss', 'AsterLoss'
]
config = copy.deepcopy(config)
......
# copyright (c) 2021 PaddlePaddle Authors. All Rights Reserve.
#
# 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.
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import paddle
from paddle import nn
class CosineEmbeddingLoss(nn.Layer):
def __init__(self, margin=0.):
super(CosineEmbeddingLoss, self).__init__()
self.margin = margin
self.epsilon = 1e-12
def forward(self, x1, x2, target):
similarity = paddle.fluid.layers.reduce_sum(
x1 * x2, dim=-1) / (paddle.norm(
x1, axis=-1) * paddle.norm(
x2, axis=-1) + self.epsilon)
one_list = paddle.full_like(target, fill_value=1)
out = paddle.fluid.layers.reduce_mean(
paddle.where(
paddle.equal(target, one_list), 1. - similarity,
paddle.maximum(
paddle.zeros_like(similarity), similarity - self.margin)))
return out
class AsterLoss(nn.Layer):
def __init__(self,
weight=None,
size_average=True,
ignore_index=-100,
sequence_normalize=False,
sample_normalize=True,
**kwargs):
super(AsterLoss, self).__init__()
self.weight = weight
self.size_average = size_average
self.ignore_index = ignore_index
self.sequence_normalize = sequence_normalize
self.sample_normalize = sample_normalize
self.loss_sem = CosineEmbeddingLoss()
self.is_cosin_loss = True
self.loss_func_rec = nn.CrossEntropyLoss(weight=None, reduction='none')
def forward(self, predicts, batch):
targets = batch[1].astype("int64")
label_lengths = batch[2].astype('int64')
sem_target = batch[3].astype('float32')
embedding_vectors = predicts['embedding_vectors']
rec_pred = predicts['rec_pred']
if not self.is_cosin_loss:
sem_loss = paddle.sum(self.loss_sem(embedding_vectors, sem_target))
else:
label_target = paddle.ones([embedding_vectors.shape[0]])
sem_loss = paddle.sum(
self.loss_sem(embedding_vectors, sem_target, label_target))
# rec loss
batch_size, def_max_length = targets.shape[0], targets.shape[1]
mask = paddle.zeros([batch_size, def_max_length])
for i in range(batch_size):
mask[i, :label_lengths[i]] = 1
mask = paddle.cast(mask, "float32")
max_length = max(label_lengths)
assert max_length == rec_pred.shape[1]
targets = targets[:, :max_length]
mask = mask[:, :max_length]
rec_pred = paddle.reshape(rec_pred, [-1, rec_pred.shape[2]])
input = nn.functional.log_softmax(rec_pred, axis=1)
targets = paddle.reshape(targets, [-1, 1])
mask = paddle.reshape(mask, [-1, 1])
output = -paddle.index_sample(input, index=targets) * mask
output = paddle.sum(output)
if self.sequence_normalize:
output = output / paddle.sum(mask)
if self.sample_normalize:
output = output / batch_size
loss = output + sem_loss * 0.1
return {'loss': loss}
......@@ -13,13 +13,20 @@
# limitations under the License.
import Levenshtein
import string
class RecMetric(object):
def __init__(self, main_indicator='acc', **kwargs):
def __init__(self, main_indicator='acc', is_filter=False, **kwargs):
self.main_indicator = main_indicator
self.is_filter = is_filter
self.reset()
def _normalize_text(self, text):
text = ''.join(
filter(lambda x: x in (string.digits + string.ascii_letters), text))
return text.lower()
def __call__(self, pred_label, *args, **kwargs):
preds, labels = pred_label
correct_num = 0
......@@ -28,6 +35,9 @@ class RecMetric(object):
for (pred, pred_conf), (target, _) in zip(preds, labels):
pred = pred.replace(" ", "")
target = target.replace(" ", "")
if self.is_filter:
pred = self._normalize_text(pred)
target = self._normalize_text(target)
norm_edit_dis += Levenshtein.distance(pred, target) / max(
len(pred), len(target), 1)
if pred == target:
......@@ -57,4 +67,3 @@ class RecMetric(object):
self.correct_num = 0
self.all_num = 0
self.norm_edit_dis = 0
......@@ -29,7 +29,8 @@ def build_backbone(config, model_type):
from .rec_nrtr_mtb import MTB
from .rec_resnet_31 import ResNet31
support_dict = [
'MobileNetV1Enhance', 'MobileNetV3', 'ResNet', 'ResNetFPN', 'MTB', "ResNet31"
'MobileNetV1Enhance', 'MobileNetV3', 'ResNet', 'ResNetFPN', 'MTB',
"ResNet31"
]
elif model_type == "e2e":
from .e2e_resnet_vd_pg import ResNet
......@@ -38,6 +39,9 @@ def build_backbone(config, model_type):
from .table_resnet_vd import ResNet
from .table_mobilenet_v3 import MobileNetV3
support_dict = ["ResNet", "MobileNetV3"]
elif model_type == "seed":
from .rec_resnet_aster import ResNet_ASTER
support_dict = ["ResNet_ASTER"]
else:
raise NotImplementedError
......
# copyright (c) 2020 PaddlePaddle Authors. All Rights Reserve.
#
# 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.
import paddle
import paddle.nn as nn
import sys
import math
def conv3x3(in_planes, out_planes, stride=1):
"""3x3 convolution with padding"""
return nn.Conv2D(
in_planes,
out_planes,
kernel_size=3,
stride=stride,
padding=1,
bias_attr=False)
def conv1x1(in_planes, out_planes, stride=1):
"""1x1 convolution"""
return nn.Conv2D(
in_planes, out_planes, kernel_size=1, stride=stride, bias_attr=False)
def get_sinusoid_encoding(n_position, feat_dim, wave_length=10000):
# [n_position]
positions = paddle.arange(0, n_position)
# [feat_dim]
dim_range = paddle.arange(0, feat_dim)
dim_range = paddle.pow(wave_length, 2 * (dim_range // 2) / feat_dim)
# [n_position, feat_dim]
angles = paddle.unsqueeze(
positions, axis=1) / paddle.unsqueeze(
dim_range, axis=0)
angles = paddle.cast(angles, "float32")
angles[:, 0::2] = paddle.sin(angles[:, 0::2])
angles[:, 1::2] = paddle.cos(angles[:, 1::2])
return angles
class AsterBlock(nn.Layer):
def __init__(self, inplanes, planes, stride=1, downsample=None):
super(AsterBlock, self).__init__()
self.conv1 = conv1x1(inplanes, planes, stride)
self.bn1 = nn.BatchNorm2D(planes)
self.relu = nn.ReLU()
self.conv2 = conv3x3(planes, planes)
self.bn2 = nn.BatchNorm2D(planes)
self.downsample = downsample
self.stride = stride
def forward(self, x):
residual = x
out = self.conv1(x)
out = self.bn1(out)
out = self.relu(out)
out = self.conv2(out)
out = self.bn2(out)
if self.downsample is not None:
residual = self.downsample(x)
out += residual
out = self.relu(out)
return out
class ResNet_ASTER(nn.Layer):
"""For aster or crnn"""
def __init__(self, with_lstm=True, n_group=1, in_channels=3):
super(ResNet_ASTER, self).__init__()
self.with_lstm = with_lstm
self.n_group = n_group
self.layer0 = nn.Sequential(
nn.Conv2D(
in_channels,
32,
kernel_size=(3, 3),
stride=1,
padding=1,
bias_attr=False),
nn.BatchNorm2D(32),
nn.ReLU())
self.inplanes = 32
self.layer1 = self._make_layer(32, 3, [2, 2]) # [16, 50]
self.layer2 = self._make_layer(64, 4, [2, 2]) # [8, 25]
self.layer3 = self._make_layer(128, 6, [2, 1]) # [4, 25]
self.layer4 = self._make_layer(256, 6, [2, 1]) # [2, 25]
self.layer5 = self._make_layer(512, 3, [2, 1]) # [1, 25]
if with_lstm:
self.rnn = nn.LSTM(512, 256, direction="bidirect", num_layers=2)
self.out_channels = 2 * 256
else:
self.out_channels = 512
def _make_layer(self, planes, blocks, stride):
downsample = None
if stride != [1, 1] or self.inplanes != planes:
downsample = nn.Sequential(
conv1x1(self.inplanes, planes, stride), nn.BatchNorm2D(planes))
layers = []
layers.append(AsterBlock(self.inplanes, planes, stride, downsample))
self.inplanes = planes
for _ in range(1, blocks):
layers.append(AsterBlock(self.inplanes, planes))
return nn.Sequential(*layers)
def forward(self, x):
x0 = self.layer0(x)
x1 = self.layer1(x0)
x2 = self.layer2(x1)
x3 = self.layer3(x2)
x4 = self.layer4(x3)
x5 = self.layer5(x4)
cnn_feat = x5.squeeze(2) # [N, c, w]
cnn_feat = paddle.transpose(cnn_feat, perm=[0, 2, 1])
if self.with_lstm:
rnn_feat, _ = self.rnn(cnn_feat)
return rnn_feat
else:
return cnn_feat
if __name__ == "__main__":
x = paddle.randn([3, 3, 32, 100])
net = ResNet_ASTER()
encoder_feat = net(x)
print(encoder_feat.shape)
......@@ -28,12 +28,14 @@ def build_head(config):
from .rec_srn_head import SRNHead
from .rec_nrtr_head import Transformer
from .rec_sar_head import SARHead
from .rec_aster_head import AsterHead
# cls head
from .cls_head import ClsHead
support_dict = [
'DBHead', 'EASTHead', 'SASTHead', 'CTCHead', 'ClsHead', 'AttentionHead',
'SRNHead', 'PGHead', 'Transformer', 'TableAttentionHead', 'SARHead'
'SRNHead', 'PGHead', 'TableAttentionHead', 'SARHead', 'Transformer',
'AsterHead', 'SARHead'
]
#table head
......
# copyright (c) 2020 PaddlePaddle Authors. All Rights Reserve.
#
# 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.
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import sys
import paddle
from paddle import nn
from paddle.nn import functional as F
class AsterHead(nn.Layer):
def __init__(self,
in_channels,
out_channels,
sDim,
attDim,
max_len_labels,
time_step=25,
beam_width=5,
**kwargs):
super(AsterHead, self).__init__()
self.num_classes = out_channels
self.in_planes = in_channels
self.sDim = sDim
self.attDim = attDim
self.max_len_labels = max_len_labels
self.decoder = AttentionRecognitionHead(in_channels, out_channels, sDim,
attDim, max_len_labels)
self.time_step = time_step
self.embeder = Embedding(self.time_step, in_channels)
self.beam_width = beam_width
self.eos = self.num_classes - 1
def forward(self, x, targets=None, embed=None):
return_dict = {}
embedding_vectors = self.embeder(x)
if self.training:
rec_targets, rec_lengths, _ = targets
rec_pred = self.decoder([x, rec_targets, rec_lengths],
embedding_vectors)
return_dict['rec_pred'] = rec_pred
return_dict['embedding_vectors'] = embedding_vectors
else:
rec_pred, rec_pred_scores = self.decoder.beam_search(
x, self.beam_width, self.eos, embedding_vectors)
return_dict['rec_pred'] = rec_pred
return_dict['rec_pred_scores'] = rec_pred_scores
return_dict['embedding_vectors'] = embedding_vectors
return return_dict
class Embedding(nn.Layer):
def __init__(self, in_timestep, in_planes, mid_dim=4096, embed_dim=300):
super(Embedding, self).__init__()
self.in_timestep = in_timestep
self.in_planes = in_planes
self.embed_dim = embed_dim
self.mid_dim = mid_dim
self.eEmbed = nn.Linear(
in_timestep * in_planes,
self.embed_dim) # Embed encoder output to a word-embedding like
def forward(self, x):
x = paddle.reshape(x, [paddle.shape(x)[0], -1])
x = self.eEmbed(x)
return x
class AttentionRecognitionHead(nn.Layer):
"""
input: [b x 16 x 64 x in_planes]
output: probability sequence: [b x T x num_classes]
"""
def __init__(self, in_channels, out_channels, sDim, attDim, max_len_labels):
super(AttentionRecognitionHead, self).__init__()
self.num_classes = out_channels # this is the output classes. So it includes the <EOS>.
self.in_planes = in_channels
self.sDim = sDim
self.attDim = attDim
self.max_len_labels = max_len_labels
self.decoder = DecoderUnit(
sDim=sDim, xDim=in_channels, yDim=self.num_classes, attDim=attDim)
def forward(self, x, embed):
x, targets, lengths = x
batch_size = paddle.shape(x)[0]
# Decoder
state = self.decoder.get_initial_state(embed)
outputs = []
for i in range(max(lengths)):
if i == 0:
y_prev = paddle.full(
shape=[batch_size], fill_value=self.num_classes)
else:
y_prev = targets[:, i - 1]
output, state = self.decoder(x, state, y_prev)
outputs.append(output)
outputs = paddle.concat([_.unsqueeze(1) for _ in outputs], 1)
return outputs
# inference stage.
def sample(self, x):
x, _, _ = x
batch_size = x.size(0)
# Decoder
state = paddle.zeros([1, batch_size, self.sDim])
predicted_ids, predicted_scores = [], []
for i in range(self.max_len_labels):
if i == 0:
y_prev = paddle.full(
shape=[batch_size], fill_value=self.num_classes)
else:
y_prev = predicted
output, state = self.decoder(x, state, y_prev)
output = F.softmax(output, axis=1)
score, predicted = output.max(1)
predicted_ids.append(predicted.unsqueeze(1))
predicted_scores.append(score.unsqueeze(1))
predicted_ids = paddle.concat([predicted_ids, 1])
predicted_scores = paddle.concat([predicted_scores, 1])
# return predicted_ids.squeeze(), predicted_scores.squeeze()
return predicted_ids, predicted_scores
def beam_search(self, x, beam_width, eos, embed):
def _inflate(tensor, times, dim):
repeat_dims = [1] * tensor.dim()
repeat_dims[dim] = times
output = paddle.tile(tensor, repeat_dims)
return output
# https://github.com/IBM/pytorch-seq2seq/blob/fede87655ddce6c94b38886089e05321dc9802af/seq2seq/models/TopKDecoder.py
batch_size, l, d = x.shape
# inflated_encoder_feats = _inflate(encoder_feats, beam_width, 0) # ABC --> AABBCC -/-> ABCABC
x = paddle.tile(
paddle.transpose(
x.unsqueeze(1), perm=[1, 0, 2, 3]), [beam_width, 1, 1, 1])
inflated_encoder_feats = paddle.reshape(
paddle.transpose(
x, perm=[1, 0, 2, 3]), [-1, l, d])
# Initialize the decoder
state = self.decoder.get_initial_state(embed, tile_times=beam_width)
pos_index = paddle.reshape(
paddle.arange(batch_size) * beam_width, shape=[-1, 1])
# Initialize the scores
sequence_scores = paddle.full(
shape=[batch_size * beam_width, 1], fill_value=-float('Inf'))
index = [i * beam_width for i in range(0, batch_size)]
sequence_scores[index] = 0.0
# Initialize the input vector
y_prev = paddle.full(
shape=[batch_size * beam_width], fill_value=self.num_classes)
# Store decisions for backtracking
stored_scores = list()
stored_predecessors = list()
stored_emitted_symbols = list()
for i in range(self.max_len_labels):
output, state = self.decoder(inflated_encoder_feats, state, y_prev)
state = paddle.unsqueeze(state, axis=0)
log_softmax_output = paddle.nn.functional.log_softmax(
output, axis=1)
sequence_scores = _inflate(sequence_scores, self.num_classes, 1)
sequence_scores += log_softmax_output
scores, candidates = paddle.topk(
paddle.reshape(sequence_scores, [batch_size, -1]),
beam_width,
axis=1)
# Reshape input = (bk, 1) and sequence_scores = (bk, 1)
y_prev = paddle.reshape(
candidates % self.num_classes, shape=[batch_size * beam_width])
sequence_scores = paddle.reshape(
scores, shape=[batch_size * beam_width, 1])
# Update fields for next timestep
pos_index = paddle.expand_as(pos_index, candidates)
predecessors = paddle.cast(
candidates / self.num_classes + pos_index, dtype='int64')
predecessors = paddle.reshape(
predecessors, shape=[batch_size * beam_width, 1])
state = paddle.index_select(
state, index=predecessors.squeeze(), axis=1)
# Update sequence socres and erase scores for <eos> symbol so that they aren't expanded
stored_scores.append(sequence_scores.clone())
y_prev = paddle.reshape(y_prev, shape=[-1, 1])
eos_prev = paddle.full_like(y_prev, fill_value=eos)
mask = eos_prev == y_prev
mask = paddle.nonzero(mask)
if mask.dim() > 0:
sequence_scores = sequence_scores.numpy()
mask = mask.numpy()
sequence_scores[mask] = -float('inf')
sequence_scores = paddle.to_tensor(sequence_scores)
# Cache results for backtracking
stored_predecessors.append(predecessors)
y_prev = paddle.squeeze(y_prev)
stored_emitted_symbols.append(y_prev)
# Do backtracking to return the optimal values
#====== backtrak ======#
# Initialize return variables given different types
p = list()
l = [[self.max_len_labels] * beam_width for _ in range(batch_size)
] # Placeholder for lengths of top-k sequences
# the last step output of the beams are not sorted
# thus they are sorted here
sorted_score, sorted_idx = paddle.topk(
paddle.reshape(
stored_scores[-1], shape=[batch_size, beam_width]),
beam_width)
# initialize the sequence scores with the sorted last step beam scores
s = sorted_score.clone()
batch_eos_found = [0] * batch_size # the number of EOS found
# in the backward loop below for each batch
t = self.max_len_labels - 1
# initialize the back pointer with the sorted order of the last step beams.
# add pos_index for indexing variable with b*k as the first dimension.
t_predecessors = paddle.reshape(
sorted_idx + pos_index.expand_as(sorted_idx),
shape=[batch_size * beam_width])
while t >= 0:
# Re-order the variables with the back pointer
current_symbol = paddle.index_select(
stored_emitted_symbols[t], index=t_predecessors, axis=0)
t_predecessors = paddle.index_select(
stored_predecessors[t].squeeze(), index=t_predecessors, axis=0)
eos_indices = stored_emitted_symbols[t] == eos
eos_indices = paddle.nonzero(eos_indices)
if eos_indices.dim() > 0:
for i in range(eos_indices.shape[0] - 1, -1, -1):
# Indices of the EOS symbol for both variables
# with b*k as the first dimension, and b, k for
# the first two dimensions
idx = eos_indices[i]
b_idx = int(idx[0] / beam_width)
# The indices of the replacing position
# according to the replacement strategy noted above
res_k_idx = beam_width - (batch_eos_found[b_idx] %
beam_width) - 1
batch_eos_found[b_idx] += 1
res_idx = b_idx * beam_width + res_k_idx
# Replace the old information in return variables
# with the new ended sequence information
t_predecessors[res_idx] = stored_predecessors[t][idx[0]]
current_symbol[res_idx] = stored_emitted_symbols[t][idx[0]]
s[b_idx, res_k_idx] = stored_scores[t][idx[0], 0]
l[b_idx][res_k_idx] = t + 1
# record the back tracked results
p.append(current_symbol)
t -= 1
# Sort and re-order again as the added ended sequences may change
# the order (very unlikely)
s, re_sorted_idx = s.topk(beam_width)
for b_idx in range(batch_size):
l[b_idx] = [
l[b_idx][k_idx.item()] for k_idx in re_sorted_idx[b_idx, :]
]
re_sorted_idx = paddle.reshape(
re_sorted_idx + pos_index.expand_as(re_sorted_idx),
[batch_size * beam_width])
# Reverse the sequences and re-order at the same time
# It is reversed because the backtracking happens in reverse time order
p = [
paddle.reshape(
paddle.index_select(step, re_sorted_idx, 0),
shape=[batch_size, beam_width, -1]) for step in reversed(p)
]
p = paddle.concat(p, -1)[:, 0, :]
return p, paddle.ones_like(p)
class AttentionUnit(nn.Layer):
def __init__(self, sDim, xDim, attDim):
super(AttentionUnit, self).__init__()
self.sDim = sDim
self.xDim = xDim
self.attDim = attDim
self.sEmbed = nn.Linear(sDim, attDim)
self.xEmbed = nn.Linear(xDim, attDim)
self.wEmbed = nn.Linear(attDim, 1)
def forward(self, x, sPrev):
batch_size, T, _ = x.shape # [b x T x xDim]
x = paddle.reshape(x, [-1, self.xDim]) # [(b x T) x xDim]
xProj = self.xEmbed(x) # [(b x T) x attDim]
xProj = paddle.reshape(xProj, [batch_size, T, -1]) # [b x T x attDim]
sPrev = sPrev.squeeze(0)
sProj = self.sEmbed(sPrev) # [b x attDim]
sProj = paddle.unsqueeze(sProj, 1) # [b x 1 x attDim]
sProj = paddle.expand(sProj,
[batch_size, T, self.attDim]) # [b x T x attDim]
sumTanh = paddle.tanh(sProj + xProj)
sumTanh = paddle.reshape(sumTanh, [-1, self.attDim])
vProj = self.wEmbed(sumTanh) # [(b x T) x 1]
vProj = paddle.reshape(vProj, [batch_size, T])
alpha = F.softmax(
vProj, axis=1) # attention weights for each sample in the minibatch
return alpha
class DecoderUnit(nn.Layer):
def __init__(self, sDim, xDim, yDim, attDim):
super(DecoderUnit, self).__init__()
self.sDim = sDim
self.xDim = xDim
self.yDim = yDim
self.attDim = attDim
self.emdDim = attDim
self.attention_unit = AttentionUnit(sDim, xDim, attDim)
self.tgt_embedding = nn.Embedding(
yDim + 1, self.emdDim, weight_attr=nn.initializer.Normal(
std=0.01)) # the last is used for <BOS>
self.gru = nn.GRUCell(input_size=xDim + self.emdDim, hidden_size=sDim)
self.fc = nn.Linear(
sDim,
yDim,
weight_attr=nn.initializer.Normal(std=0.01),
bias_attr=nn.initializer.Constant(value=0))
self.embed_fc = nn.Linear(300, self.sDim)
def get_initial_state(self, embed, tile_times=1):
assert embed.shape[1] == 300
state = self.embed_fc(embed) # N * sDim
if tile_times != 1:
state = state.unsqueeze(1)
trans_state = paddle.transpose(state, perm=[1, 0, 2])
state = paddle.tile(trans_state, repeat_times=[tile_times, 1, 1])
trans_state = paddle.transpose(state, perm=[1, 0, 2])
state = paddle.reshape(trans_state, shape=[-1, self.sDim])
state = state.unsqueeze(0) # 1 * N * sDim
return state
def forward(self, x, sPrev, yPrev):
# x: feature sequence from the image decoder.
batch_size, T, _ = x.shape
alpha = self.attention_unit(x, sPrev)
context = paddle.squeeze(paddle.matmul(alpha.unsqueeze(1), x), axis=1)
yPrev = paddle.cast(yPrev, dtype="int64")
yProj = self.tgt_embedding(yPrev)
concat_context = paddle.concat([yProj, context], 1)
concat_context = paddle.squeeze(concat_context, 1)
sPrev = paddle.squeeze(sPrev, 0)
output, state = self.gru(concat_context, sPrev)
output = paddle.squeeze(output, axis=1)
output = self.fc(output)
return output, state
\ No newline at end of file
......@@ -17,8 +17,9 @@ __all__ = ['build_transform']
def build_transform(config):
from .tps import TPS
from .tps import STN_ON
support_dict = ['TPS']
support_dict = ['TPS', 'STN_ON']
module_name = config.pop('name')
assert module_name in support_dict, Exception(
......
# copyright (c) 2020 PaddlePaddle Authors. All Rights Reserve.
#
# 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.
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import math
import paddle
from paddle import nn, ParamAttr
from paddle.nn import functional as F
import numpy as np
def conv3x3_block(in_channels, out_channels, stride=1):
n = 3 * 3 * out_channels
w = math.sqrt(2. / n)
conv_layer = nn.Conv2D(
in_channels,
out_channels,
kernel_size=3,
stride=stride,
padding=1,
weight_attr=nn.initializer.Normal(
mean=0.0, std=w),
bias_attr=nn.initializer.Constant(0))
block = nn.Sequential(conv_layer, nn.BatchNorm2D(out_channels), nn.ReLU())
return block
class STN(nn.Layer):
def __init__(self, in_channels, num_ctrlpoints, activation='none'):
super(STN, self).__init__()
self.in_channels = in_channels
self.num_ctrlpoints = num_ctrlpoints
self.activation = activation
self.stn_convnet = nn.Sequential(
conv3x3_block(in_channels, 32), #32x64
nn.MaxPool2D(
kernel_size=2, stride=2),
conv3x3_block(32, 64), #16x32
nn.MaxPool2D(
kernel_size=2, stride=2),
conv3x3_block(64, 128), # 8*16
nn.MaxPool2D(
kernel_size=2, stride=2),
conv3x3_block(128, 256), # 4*8
nn.MaxPool2D(
kernel_size=2, stride=2),
conv3x3_block(256, 256), # 2*4,
nn.MaxPool2D(
kernel_size=2, stride=2),
conv3x3_block(256, 256)) # 1*2
self.stn_fc1 = nn.Sequential(
nn.Linear(
2 * 256,
512,
weight_attr=nn.initializer.Normal(0, 0.001),
bias_attr=nn.initializer.Constant(0)),
nn.BatchNorm1D(512),
nn.ReLU())
fc2_bias = self.init_stn()
self.stn_fc2 = nn.Linear(
512,
num_ctrlpoints * 2,
weight_attr=nn.initializer.Constant(0.0),
bias_attr=nn.initializer.Assign(fc2_bias))
def init_stn(self):
margin = 0.01
sampling_num_per_side = int(self.num_ctrlpoints / 2)
ctrl_pts_x = np.linspace(margin, 1. - margin, sampling_num_per_side)
ctrl_pts_y_top = np.ones(sampling_num_per_side) * margin
ctrl_pts_y_bottom = np.ones(sampling_num_per_side) * (1 - margin)
ctrl_pts_top = np.stack([ctrl_pts_x, ctrl_pts_y_top], axis=1)
ctrl_pts_bottom = np.stack([ctrl_pts_x, ctrl_pts_y_bottom], axis=1)
ctrl_points = np.concatenate(
[ctrl_pts_top, ctrl_pts_bottom], axis=0).astype(np.float32)
if self.activation == 'none':
pass
elif self.activation == 'sigmoid':
ctrl_points = -np.log(1. / ctrl_points - 1.)
ctrl_points = paddle.to_tensor(ctrl_points)
fc2_bias = paddle.reshape(
ctrl_points, shape=[ctrl_points.shape[0] * ctrl_points.shape[1]])
return fc2_bias
def forward(self, x):
x = self.stn_convnet(x)
batch_size, _, h, w = x.shape
x = paddle.reshape(x, shape=(batch_size, -1))
img_feat = self.stn_fc1(x)
x = self.stn_fc2(0.1 * img_feat)
if self.activation == 'sigmoid':
x = F.sigmoid(x)
x = paddle.reshape(x, shape=[-1, self.num_ctrlpoints, 2])
return img_feat, x
......@@ -22,6 +22,9 @@ from paddle import nn, ParamAttr
from paddle.nn import functional as F
import numpy as np
from .tps_spatial_transformer import TPSSpatialTransformer
from .stn import STN
class ConvBNLayer(nn.Layer):
def __init__(self,
......@@ -231,7 +234,8 @@ class GridGenerator(nn.Layer):
""" Return inv_delta_C which is needed to calculate T """
F = self.F
hat_eye = paddle.eye(F, dtype='float64') # F x F
hat_C = paddle.norm(C.reshape([1, F, 2]) - C.reshape([F, 1, 2]), axis=2) + hat_eye
hat_C = paddle.norm(
C.reshape([1, F, 2]) - C.reshape([F, 1, 2]), axis=2) + hat_eye
hat_C = (hat_C**2) * paddle.log(hat_C)
delta_C = paddle.concat( # F+3 x F+3
[
......@@ -301,3 +305,25 @@ class TPS(nn.Layer):
[-1, image.shape[2], image.shape[3], 2])
batch_I_r = F.grid_sample(x=image, grid=batch_P_prime)
return batch_I_r
class STN_ON(nn.Layer):
def __init__(self, in_channels, tps_inputsize, tps_outputsize,
num_control_points, tps_margins, stn_activation):
super(STN_ON, self).__init__()
self.tps = TPSSpatialTransformer(
output_image_size=tuple(tps_outputsize),
num_control_points=num_control_points,
margins=tuple(tps_margins))
self.stn_head = STN(in_channels=in_channels,
num_ctrlpoints=num_control_points,
activation=stn_activation)
self.tps_inputsize = tps_inputsize
self.out_channels = in_channels
def forward(self, image):
stn_input = paddle.nn.functional.interpolate(
image, self.tps_inputsize, mode="bilinear", align_corners=True)
stn_img_feat, ctrl_points = self.stn_head(stn_input)
x, _ = self.tps(image, ctrl_points)
return x
# copyright (c) 2020 PaddlePaddle Authors. All Rights Reserve.
#
# 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.
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import math
import paddle
from paddle import nn, ParamAttr
from paddle.nn import functional as F
import numpy as np
import itertools
def grid_sample(input, grid, canvas=None):
input.stop_gradient = False
output = F.grid_sample(input, grid)
if canvas is None:
return output
else:
input_mask = paddle.ones(shape=input.shape)
output_mask = F.grid_sample(input_mask, grid)
padded_output = output * output_mask + canvas * (1 - output_mask)
return padded_output
# phi(x1, x2) = r^2 * log(r), where r = ||x1 - x2||_2
def compute_partial_repr(input_points, control_points):
N = input_points.shape[0]
M = control_points.shape[0]
pairwise_diff = paddle.reshape(
input_points, shape=[N, 1, 2]) - paddle.reshape(
control_points, shape=[1, M, 2])
# original implementation, very slow
# pairwise_dist = torch.sum(pairwise_diff ** 2, dim = 2) # square of distance
pairwise_diff_square = pairwise_diff * pairwise_diff
pairwise_dist = pairwise_diff_square[:, :, 0] + pairwise_diff_square[:, :,
1]
repr_matrix = 0.5 * pairwise_dist * paddle.log(pairwise_dist)
# fix numerical error for 0 * log(0), substitute all nan with 0
mask = repr_matrix != repr_matrix
repr_matrix[mask] = 0
return repr_matrix
# output_ctrl_pts are specified, according to our task.
def build_output_control_points(num_control_points, margins):
margin_x, margin_y = margins
num_ctrl_pts_per_side = num_control_points // 2
ctrl_pts_x = np.linspace(margin_x, 1.0 - margin_x, num_ctrl_pts_per_side)
ctrl_pts_y_top = np.ones(num_ctrl_pts_per_side) * margin_y
ctrl_pts_y_bottom = np.ones(num_ctrl_pts_per_side) * (1.0 - margin_y)
ctrl_pts_top = np.stack([ctrl_pts_x, ctrl_pts_y_top], axis=1)
ctrl_pts_bottom = np.stack([ctrl_pts_x, ctrl_pts_y_bottom], axis=1)
# ctrl_pts_top = ctrl_pts_top[1:-1,:]
# ctrl_pts_bottom = ctrl_pts_bottom[1:-1,:]
output_ctrl_pts_arr = np.concatenate(
[ctrl_pts_top, ctrl_pts_bottom], axis=0)
output_ctrl_pts = paddle.to_tensor(output_ctrl_pts_arr)
return output_ctrl_pts
class TPSSpatialTransformer(nn.Layer):
def __init__(self,
output_image_size=None,
num_control_points=None,
margins=None):
super(TPSSpatialTransformer, self).__init__()
self.output_image_size = output_image_size
self.num_control_points = num_control_points
self.margins = margins
self.target_height, self.target_width = output_image_size
target_control_points = build_output_control_points(num_control_points,
margins)
N = num_control_points
# N = N - 4
# create padded kernel matrix
forward_kernel = paddle.zeros(shape=[N + 3, N + 3])
target_control_partial_repr = compute_partial_repr(
target_control_points, target_control_points)
target_control_partial_repr = paddle.cast(target_control_partial_repr,
forward_kernel.dtype)
forward_kernel[:N, :N] = target_control_partial_repr
forward_kernel[:N, -3] = 1
forward_kernel[-3, :N] = 1
target_control_points = paddle.cast(target_control_points,
forward_kernel.dtype)
forward_kernel[:N, -2:] = target_control_points
forward_kernel[-2:, :N] = paddle.transpose(
target_control_points, perm=[1, 0])
# compute inverse matrix
inverse_kernel = paddle.inverse(forward_kernel)
# create target cordinate matrix
HW = self.target_height * self.target_width
target_coordinate = list(
itertools.product(
range(self.target_height), range(self.target_width)))
target_coordinate = paddle.to_tensor(target_coordinate) # HW x 2
Y, X = paddle.split(
target_coordinate, target_coordinate.shape[1], axis=1)
#Y, X = target_coordinate.split(1, dim = 1)
Y = Y / (self.target_height - 1)
X = X / (self.target_width - 1)
target_coordinate = paddle.concat(
[X, Y], axis=1) # convert from (y, x) to (x, y)
target_coordinate_partial_repr = compute_partial_repr(
target_coordinate, target_control_points)
target_coordinate_repr = paddle.concat(
[
target_coordinate_partial_repr, paddle.ones(shape=[HW, 1]),
target_coordinate
],
axis=1)
# register precomputed matrices
self.inverse_kernel = inverse_kernel
self.padding_matrix = paddle.zeros(shape=[3, 2])
self.target_coordinate_repr = target_coordinate_repr
self.target_control_points = target_control_points
def forward(self, input, source_control_points):
assert source_control_points.ndimension() == 3
assert source_control_points.shape[1] == self.num_control_points
assert source_control_points.shape[2] == 2
#batch_size = source_control_points.shape[0]
batch_size = paddle.shape(source_control_points)[0]
self.padding_matrix = paddle.expand(
self.padding_matrix, shape=[batch_size, 3, 2])
Y = paddle.concat([source_control_points, self.padding_matrix], 1)
mapping_matrix = paddle.matmul(self.inverse_kernel, Y)
source_coordinate = paddle.matmul(self.target_coordinate_repr,
mapping_matrix)
grid = paddle.reshape(
source_coordinate,
shape=[-1, self.target_height, self.target_width, 2])
grid = paddle.clip(grid, 0,
1) # the source_control_points may be out of [0, 1].
# the input to grid_sample is normalized [-1, 1], but what we get is [0, 1]
grid = 2.0 * grid - 1.0
output_maps = grid_sample(input, grid, canvas=None)
return output_maps, source_coordinate
......@@ -127,3 +127,34 @@ class RMSProp(object):
grad_clip=self.grad_clip,
parameters=parameters)
return opt
class Adadelta(object):
def __init__(self,
learning_rate=0.001,
epsilon=1e-08,
rho=0.95,
parameter_list=None,
weight_decay=None,
grad_clip=None,
name=None,
**kwargs):
self.learning_rate = learning_rate
self.epsilon = epsilon
self.rho = rho
self.parameter_list = parameter_list
self.learning_rate = learning_rate
self.weight_decay = weight_decay
self.grad_clip = grad_clip
self.name = name
def __call__(self, parameters):
opt = optim.Adadelta(
learning_rate=self.learning_rate,
epsilon=self.epsilon,
rho=self.rho,
weight_decay=self.weight_decay,
grad_clip=self.grad_clip,
name=self.name,
parameters=parameters)
return opt
......@@ -24,17 +24,19 @@ __all__ = ['build_post_process']
from .db_postprocess import DBPostProcess, DistillationDBPostProcess
from .east_postprocess import EASTPostProcess
from .sast_postprocess import SASTPostProcess
from .rec_postprocess import CTCLabelDecode, AttnLabelDecode, SRNLabelDecode, DistillationCTCLabelDecode, NRTRLabelDecode, \
TableLabelDecode, SARLabelDecode
from .rec_postprocess import CTCLabelDecode, AttnLabelDecode, SRNLabelDecode, DistillationCTCLabelDecode, \
TableLabelDecode, NRTRLabelDecode, SARLabelDecode , SEEDLabelDecode
from .cls_postprocess import ClsPostProcess
from .pg_postprocess import PGPostProcess
def build_post_process(config, global_config=None):
support_dict = [
'DBPostProcess', 'EASTPostProcess', 'SASTPostProcess', 'CTCLabelDecode',
'AttnLabelDecode', 'ClsPostProcess', 'SRNLabelDecode', 'PGPostProcess',
'DistillationCTCLabelDecode', 'TableLabelDecode',
'DistillationDBPostProcess', 'NRTRLabelDecode', 'SARLabelDecode'
'DistillationDBPostProcess', 'NRTRLabelDecode', 'SARLabelDecode',
'SEEDLabelDecode'
]
config = copy.deepcopy(config)
......
......@@ -303,6 +303,88 @@ class AttnLabelDecode(BaseRecLabelDecode):
return idx
class SEEDLabelDecode(BaseRecLabelDecode):
""" Convert between text-label and text-index """
def __init__(self,
character_dict_path=None,
character_type='ch',
use_space_char=False,
**kwargs):
super(SEEDLabelDecode, self).__init__(character_dict_path,
character_type, use_space_char)
def add_special_char(self, dict_character):
self.beg_str = "sos"
self.end_str = "eos"
dict_character = dict_character
dict_character = dict_character + [self.end_str]
return dict_character
def get_ignored_tokens(self):
end_idx = self.get_beg_end_flag_idx("eos")
return [end_idx]
def get_beg_end_flag_idx(self, beg_or_end):
if beg_or_end == "sos":
idx = np.array(self.dict[self.beg_str])
elif beg_or_end == "eos":
idx = np.array(self.dict[self.end_str])
else:
assert False, "unsupport type %s in get_beg_end_flag_idx" % beg_or_end
return idx
def decode(self, text_index, text_prob=None, is_remove_duplicate=False):
""" convert text-index into text-label. """
result_list = []
[end_idx] = self.get_ignored_tokens()
batch_size = len(text_index)
for batch_idx in range(batch_size):
char_list = []
conf_list = []
for idx in range(len(text_index[batch_idx])):
if int(text_index[batch_idx][idx]) == int(end_idx):
break
if is_remove_duplicate:
# only for predict
if idx > 0 and text_index[batch_idx][idx - 1] == text_index[
batch_idx][idx]:
continue
char_list.append(self.character[int(text_index[batch_idx][
idx])])
if text_prob is not None:
conf_list.append(text_prob[batch_idx][idx])
else:
conf_list.append(1)
text = ''.join(char_list)
result_list.append((text, np.mean(conf_list)))
return result_list
def __call__(self, preds, label=None, *args, **kwargs):
"""
text = self.decode(text)
if label is None:
return text
else:
label = self.decode(label, is_remove_duplicate=False)
return text, label
"""
preds_idx = preds["rec_pred"]
if isinstance(preds_idx, paddle.Tensor):
preds_idx = preds_idx.numpy()
if "rec_pred_scores" in preds:
preds_idx = preds["rec_pred"]
preds_prob = preds["rec_pred_scores"]
else:
preds_idx = preds["rec_pred"].argmax(axis=2)
preds_prob = preds["rec_pred"].max(axis=2)
text = self.decode(preds_idx, preds_prob, is_remove_duplicate=False)
if label is None:
return text
label = self.decode(label, is_remove_duplicate=False)
return text, label
class SRNLabelDecode(BaseRecLabelDecode):
""" Convert between text-label and text-index """
......
......@@ -188,10 +188,12 @@ def train(config,
use_srn = config['Architecture']['algorithm'] == "SRN"
use_nrtr = config['Architecture']['algorithm'] == "NRTR"
use_sar = config['Architecture']['algorithm'] == 'SAR'
use_seed = config['Architecture']['algorithm'] == 'SEED'
try:
model_type = config['Architecture']['model_type']
except:
model_type = None
algorithm = config['Architecture']['algorithm']
if 'start_epoch' in best_model_dict:
start_epoch = best_model_dict['start_epoch']
......@@ -215,7 +217,7 @@ def train(config,
images = batch[0]
if use_srn:
model_average = True
if use_srn or model_type == 'table' or use_nrtr or use_sar:
if use_srn or model_type == 'table' or use_nrtr or use_sar or use_seed:
preds = model(images, data=batch[1:])
else:
preds = model(images)
......@@ -402,7 +404,7 @@ def preprocess(is_train=False):
alg = config['Architecture']['algorithm']
assert alg in [
'EAST', 'DB', 'SAST', 'Rosetta', 'CRNN', 'STARNet', 'RARE', 'SRN',
'CLS', 'PGNet', 'Distillation', 'NRTR', 'TableAttn', 'SAR'
'CLS', 'PGNet', 'Distillation', 'NRTR', 'TableAttn', 'SAR', 'ASTER'
]
device = 'gpu:{}'.format(dist.ParallelEnv().dev_id) if use_gpu else 'cpu'
......
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