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58 lines
1.5 KiB
Python
58 lines
1.5 KiB
Python
from configparser import ConfigParser
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import pytest
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import torch
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from face_swapper.src.networks.aad import AAD
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from face_swapper.src.networks.masknet import MaskNet
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from face_swapper.src.networks.unet import UNet
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@pytest.mark.parametrize('output_size', [ 128, 256, 512 ])
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def test_aad_with_unet(output_size : int) -> None:
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config_parser = ConfigParser()
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config_parser.read_dict(
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{
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'training.model.generator':
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{
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'identity_channels': '512',
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'output_channels': str(output_size * 16),
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'output_size': str(output_size),
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'num_blocks': '2'
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}
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})
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generator = AAD(config_parser).eval()
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encoder = UNet(config_parser).eval()
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source_tensor = torch.randn(1, 512)
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target_tensor = torch.randn(1, 3, output_size, output_size)
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target_attributes = encoder(target_tensor)
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output_tensor = generator(source_tensor, target_attributes)
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assert output_tensor.shape == (1, 3, output_size, output_size)
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@pytest.mark.parametrize('output_size', [ 128, 256, 512 ])
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def test_mask_net(output_size : int) -> None:
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config_parser = ConfigParser()
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config_parser.read_dict(
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{
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'training.model.masker':
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{
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'input_channels': '67',
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'output_channels': '1',
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'num_filters': '16'
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}
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})
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masker = MaskNet(config_parser).eval()
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target_tensor = torch.randn(1, 3, output_size, output_size)
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target_attribute = torch.randn(1, 64, output_size, output_size)
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output_tensor = masker(target_tensor, target_attribute)
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assert output_tensor.shape == (1, 1, output_size, output_size)
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