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import torch |
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from torch import nn |
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from openrec.modeling.decoders import build_decoder |
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from openrec.modeling.encoders import build_encoder |
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from openrec.modeling.transforms import build_transform |
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__all__ = ['BaseRecognizer'] |
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class BaseRecognizer(nn.Module): |
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def __init__(self, config): |
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"""the module for OCR. |
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args: |
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config (dict): the super parameters for module. |
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""" |
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super(BaseRecognizer, self).__init__() |
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in_channels = config.get('in_channels', 3) |
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self.use_wd = config.get('use_wd', True) |
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if 'Transform' not in config or config['Transform'] is None: |
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self.use_transform = False |
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else: |
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self.use_transform = True |
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config['Transform']['in_channels'] = in_channels |
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self.transform = build_transform(config['Transform']) |
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in_channels = self.transform.out_channels |
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if 'Encoder' not in config or config['Encoder'] is None: |
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self.use_encoder = False |
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else: |
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self.use_encoder = True |
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config['Encoder']['in_channels'] = in_channels |
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self.encoder = build_encoder(config['Encoder']) |
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in_channels = self.encoder.out_channels |
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if 'Decoder' not in config or config['Decoder'] is None: |
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self.use_decoder = False |
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else: |
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self.use_decoder = True |
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config['Decoder']['in_channels'] = in_channels |
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self.decoder = build_decoder(config['Decoder']) |
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@torch.jit.ignore |
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def no_weight_decay(self): |
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if self.use_wd: |
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if hasattr(self.encoder, 'no_weight_decay'): |
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no_weight_decay = self.encoder.no_weight_decay() |
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else: |
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no_weight_decay = {} |
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if hasattr(self.decoder, 'no_weight_decay'): |
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no_weight_decay.update(self.decoder.no_weight_decay()) |
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return no_weight_decay |
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else: |
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return {} |
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def forward(self, x, data=None): |
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if self.use_transform: |
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x = self.transform(x) |
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if self.use_encoder: |
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x = self.encoder(x) |
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if self.use_decoder: |
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x = self.decoder(x, data=data) |
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return x |
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