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import torch |
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from ..builder import HEADS |
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from .fcn_head import FCNHead |
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try: |
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from mmcv.ops import CrissCrossAttention |
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except ModuleNotFoundError: |
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CrissCrossAttention = None |
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@HEADS.register_module() |
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class CCHead(FCNHead): |
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"""CCNet: Criss-Cross Attention for Semantic Segmentation. |
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This head is the implementation of `CCNet |
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<https://arxiv.org/abs/1811.11721>`_. |
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Args: |
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recurrence (int): Number of recurrence of Criss Cross Attention |
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module. Default: 2. |
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""" |
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def __init__(self, recurrence=2, **kwargs): |
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if CrissCrossAttention is None: |
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raise RuntimeError('Please install mmcv-full for ' |
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'CrissCrossAttention ops') |
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super(CCHead, self).__init__(num_convs=2, **kwargs) |
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self.recurrence = recurrence |
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self.cca = CrissCrossAttention(self.channels) |
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def forward(self, inputs): |
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"""Forward function.""" |
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x = self._transform_inputs(inputs) |
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output = self.convs[0](x) |
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for _ in range(self.recurrence): |
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output = self.cca(output) |
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output = self.convs[1](output) |
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if self.concat_input: |
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output = self.conv_cat(torch.cat([x, output], dim=1)) |
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output = self.cls_seg(output) |
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return output |
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