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| import unittest |
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| import torch |
| from parameterized import parameterized |
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| from monai.networks.nets import Discriminator |
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| TEST_CASE_0 = [ |
| {"in_shape": (1, 64, 64), "channels": (2, 4, 8), "strides": (2, 2, 2), "num_res_units": 0}, |
| torch.rand(16, 1, 64, 64), |
| (16, 1), |
| ] |
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| TEST_CASE_1 = [ |
| {"in_shape": (1, 64, 64), "channels": (2, 4, 8), "strides": (2, 2, 2), "num_res_units": 2}, |
| torch.rand(16, 1, 64, 64), |
| (16, 1), |
| ] |
|
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| TEST_CASE_2 = [ |
| {"in_shape": (1, 64, 64), "channels": (2, 4), "strides": (2, 2), "num_res_units": 0}, |
| torch.rand(16, 1, 64, 64), |
| (16, 1), |
| ] |
|
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| CASES = [TEST_CASE_0, TEST_CASE_1, TEST_CASE_2] |
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| class TestDiscriminator(unittest.TestCase): |
| @parameterized.expand(CASES) |
| def test_shape(self, input_param, input_data, expected_shape): |
| net = Discriminator(**input_param) |
| net.eval() |
| with torch.no_grad(): |
| result = net.forward(input_data) |
| self.assertEqual(result.shape, expected_shape) |
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|
|
| if __name__ == "__main__": |
| unittest.main() |
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