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import torch
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import torch.nn as nn
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from mmaction.models import I3DHead
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def test_i3d_head():
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"""Test loss method, layer construction, attributes and forward function in
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i3d head."""
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i3d_head = I3DHead(num_classes=4, in_channels=2048)
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i3d_head.init_weights()
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assert i3d_head.num_classes == 4
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assert i3d_head.dropout_ratio == 0.5
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assert i3d_head.in_channels == 2048
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assert i3d_head.init_std == 0.01
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assert isinstance(i3d_head.dropout, nn.Dropout)
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assert i3d_head.dropout.p == i3d_head.dropout_ratio
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assert isinstance(i3d_head.fc_cls, nn.Linear)
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assert i3d_head.fc_cls.in_features == i3d_head.in_channels
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assert i3d_head.fc_cls.out_features == i3d_head.num_classes
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assert isinstance(i3d_head.avg_pool, nn.AdaptiveAvgPool3d)
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assert i3d_head.avg_pool.output_size == (1, 1, 1)
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input_shape = (3, 2048, 4, 7, 7)
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feat = torch.rand(input_shape)
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cls_scores = i3d_head(feat)
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assert cls_scores.shape == torch.Size([3, 4])
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