rec_multi_head.py 5.5 KB

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  1. # copyright (c) 2022 PaddlePaddle Authors. All Rights Reserve.
  2. #
  3. # Licensed under the Apache License, Version 2.0 (the "License");
  4. # you may not use this file except in compliance with the License.
  5. # You may obtain a copy of the License at
  6. #
  7. # http://www.apache.org/licenses/LICENSE-2.0
  8. #
  9. # Unless required by applicable law or agreed to in writing, software
  10. # distributed under the License is distributed on an "AS IS" BASIS,
  11. # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  12. # See the License for the specific language governing permissions and
  13. # limitations under the License.
  14. from __future__ import absolute_import
  15. from __future__ import division
  16. from __future__ import print_function
  17. import math
  18. import paddle
  19. from paddle import ParamAttr
  20. import paddle.nn as nn
  21. import paddle.nn.functional as F
  22. from ppocr.modeling.necks.rnn import (
  23. Im2Seq,
  24. EncoderWithRNN,
  25. EncoderWithFC,
  26. SequenceEncoder,
  27. EncoderWithSVTR,
  28. trunc_normal_,
  29. zeros_,
  30. )
  31. from .rec_ctc_head import CTCHead
  32. from .rec_sar_head import SARHead
  33. from .rec_nrtr_head import Transformer
  34. class FCTranspose(nn.Layer):
  35. def __init__(self, in_channels, out_channels, only_transpose=False):
  36. super().__init__()
  37. self.only_transpose = only_transpose
  38. if not self.only_transpose:
  39. self.fc = nn.Linear(in_channels, out_channels, bias_attr=False)
  40. def forward(self, x):
  41. if self.only_transpose:
  42. return x.transpose([0, 2, 1])
  43. else:
  44. return self.fc(x.transpose([0, 2, 1]))
  45. class AddPos(nn.Layer):
  46. def __init__(self, dim, w):
  47. super().__init__()
  48. self.dec_pos_embed = self.create_parameter(
  49. shape=[1, w, dim], default_initializer=zeros_
  50. )
  51. self.add_parameter("dec_pos_embed", self.dec_pos_embed)
  52. trunc_normal_(self.dec_pos_embed)
  53. def forward(self, x):
  54. x = x + self.dec_pos_embed[:, : x.shape[1], :]
  55. return x
  56. class MultiHead(nn.Layer):
  57. def __init__(self, in_channels, out_channels_list, **kwargs):
  58. super().__init__()
  59. self.head_list = kwargs.pop("head_list")
  60. self.use_pool = kwargs.get("use_pool", False)
  61. self.use_pos = kwargs.get("use_pos", False)
  62. self.in_channels = in_channels
  63. if self.use_pool:
  64. self.pool = nn.AvgPool2D(kernel_size=[3, 2], stride=[3, 2], padding=0)
  65. self.gtc_head = "sar"
  66. assert len(self.head_list) >= 2
  67. for idx, head_name in enumerate(self.head_list):
  68. name = list(head_name)[0]
  69. if name == "SARHead":
  70. # sar head
  71. sar_args = self.head_list[idx][name]
  72. self.sar_head = eval(name)(
  73. in_channels=in_channels,
  74. out_channels=out_channels_list["SARLabelDecode"],
  75. **sar_args,
  76. )
  77. elif name == "NRTRHead":
  78. gtc_args = self.head_list[idx][name]
  79. max_text_length = gtc_args.get("max_text_length", 25)
  80. nrtr_dim = gtc_args.get("nrtr_dim", 256)
  81. num_decoder_layers = gtc_args.get("num_decoder_layers", 4)
  82. if self.use_pos:
  83. self.before_gtc = nn.Sequential(
  84. nn.Flatten(2),
  85. FCTranspose(in_channels, nrtr_dim),
  86. AddPos(nrtr_dim, 80),
  87. )
  88. else:
  89. self.before_gtc = nn.Sequential(
  90. nn.Flatten(2), FCTranspose(in_channels, nrtr_dim)
  91. )
  92. self.gtc_head = Transformer(
  93. d_model=nrtr_dim,
  94. nhead=nrtr_dim // 32,
  95. num_encoder_layers=-1,
  96. beam_size=-1,
  97. num_decoder_layers=num_decoder_layers,
  98. max_len=max_text_length,
  99. dim_feedforward=nrtr_dim * 4,
  100. out_channels=out_channels_list["NRTRLabelDecode"],
  101. )
  102. elif name == "CTCHead":
  103. # ctc neck
  104. self.encoder_reshape = Im2Seq(in_channels)
  105. neck_args = self.head_list[idx][name]["Neck"]
  106. encoder_type = neck_args.pop("name")
  107. self.ctc_encoder = SequenceEncoder(
  108. in_channels=in_channels, encoder_type=encoder_type, **neck_args
  109. )
  110. # ctc head
  111. head_args = self.head_list[idx][name]["Head"]
  112. self.ctc_head = eval(name)(
  113. in_channels=self.ctc_encoder.out_channels,
  114. out_channels=out_channels_list["CTCLabelDecode"],
  115. **head_args,
  116. )
  117. else:
  118. raise NotImplementedError(
  119. "{} is not supported in MultiHead yet".format(name)
  120. )
  121. def forward(self, x, targets=None):
  122. if self.use_pool:
  123. x = self.pool(
  124. x.reshape([0, 3, -1, self.in_channels]).transpose([0, 3, 1, 2])
  125. )
  126. ctc_encoder = self.ctc_encoder(x)
  127. ctc_out = self.ctc_head(ctc_encoder, targets)
  128. head_out = dict()
  129. head_out["ctc"] = ctc_out
  130. head_out["ctc_neck"] = ctc_encoder
  131. # eval mode
  132. if not self.training:
  133. return ctc_out
  134. if self.gtc_head == "sar":
  135. sar_out = self.sar_head(x, targets[1:])
  136. head_out["sar"] = sar_out
  137. else:
  138. gtc_out = self.gtc_head(self.before_gtc(x), targets[1:])
  139. head_out["gtc"] = gtc_out
  140. return head_out