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| from monai.networks.blocks import Convolution, ResidualUnit |
| from tests.utils import TorchImageTestCase2D, TorchImageTestCase3D |
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|
| class TestConvolution2D(TorchImageTestCase2D): |
| def test_conv1(self): |
| conv = Convolution(2, self.input_channels, self.output_channels) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[0], self.im_shape[1]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_conv1_no_acti(self): |
| conv = Convolution(2, self.input_channels, self.output_channels, act=None) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[0], self.im_shape[1]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_conv_only1(self): |
| conv = Convolution(2, self.input_channels, self.output_channels, conv_only=True) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[0], self.im_shape[1]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_stride1(self): |
| conv = Convolution(2, self.input_channels, self.output_channels, strides=2) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[0] // 2, self.im_shape[1] // 2) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_dilation1(self): |
| conv = Convolution(2, self.input_channels, self.output_channels, dilation=3) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[0], self.im_shape[1]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_dropout1(self): |
| conv = Convolution(2, self.input_channels, self.output_channels, dropout=0.15) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[0], self.im_shape[1]) |
| self.assertEqual(out.shape, expected_shape) |
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|
| def test_transpose1(self): |
| conv = Convolution(2, self.input_channels, self.output_channels, is_transposed=True) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[0], self.im_shape[1]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_transpose2(self): |
| conv = Convolution(2, self.input_channels, self.output_channels, strides=2, is_transposed=True) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[0] * 2, self.im_shape[1] * 2) |
| self.assertEqual(out.shape, expected_shape) |
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|
| class TestConvolution3D(TorchImageTestCase3D): |
| def test_conv1(self): |
| conv = Convolution(3, self.input_channels, self.output_channels) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[1], self.im_shape[0], self.im_shape[2]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_conv1_no_acti(self): |
| conv = Convolution(3, self.input_channels, self.output_channels, act=None) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[1], self.im_shape[0], self.im_shape[2]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_conv_only1(self): |
| conv = Convolution(3, self.input_channels, self.output_channels, conv_only=True) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[1], self.im_shape[0], self.im_shape[2]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_stride1(self): |
| conv = Convolution(3, self.input_channels, self.output_channels, strides=2) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[1] // 2, self.im_shape[0] // 2, self.im_shape[2] // 2) |
| self.assertEqual(out.shape, expected_shape) |
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|
| def test_dilation1(self): |
| conv = Convolution(3, self.input_channels, self.output_channels, dilation=3) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[1], self.im_shape[0], self.im_shape[2]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_dropout1(self): |
| conv = Convolution(3, self.input_channels, self.output_channels, dropout=0.15) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[1], self.im_shape[0], self.im_shape[2]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_transpose1(self): |
| conv = Convolution(3, self.input_channels, self.output_channels, is_transposed=True) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[1], self.im_shape[0], self.im_shape[2]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_transpose2(self): |
| conv = Convolution(3, self.input_channels, self.output_channels, strides=2, is_transposed=True) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[1] * 2, self.im_shape[0] * 2, self.im_shape[2] * 2) |
| self.assertEqual(out.shape, expected_shape) |
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|
|
| class TestResidualUnit2D(TorchImageTestCase2D): |
| def test_conv_only1(self): |
| conv = ResidualUnit(2, 1, self.output_channels) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[0], self.im_shape[1]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_stride1(self): |
| conv = ResidualUnit(2, 1, self.output_channels, strides=2) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[0] // 2, self.im_shape[1] // 2) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_dilation1(self): |
| conv = ResidualUnit(2, 1, self.output_channels, dilation=3) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[0], self.im_shape[1]) |
| self.assertEqual(out.shape, expected_shape) |
|
|
| def test_dropout1(self): |
| conv = ResidualUnit(2, 1, self.output_channels, dropout=0.15) |
| out = conv(self.imt) |
| expected_shape = (1, self.output_channels, self.im_shape[0], self.im_shape[1]) |
| self.assertEqual(out.shape, expected_shape) |
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