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| """Tests for resnet."""
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| from absl.testing import parameterized
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| import tensorflow as tf, tf_keras
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| from official.vision.modeling.backbones import resnet_3d
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| class ResNet3DTest(parameterized.TestCase, tf.test.TestCase):
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| @parameterized.parameters(
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| (128, 50, 4, 'v0', False, 0.0),
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| (128, 50, 4, 'v1', False, 0.2),
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| (256, 50, 4, 'v1', True, 0.2),
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| )
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| def test_network_creation(self, input_size, model_id, endpoint_filter_scale,
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| stem_type, se_ratio, init_stochastic_depth_rate):
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| """Test creation of ResNet3D family models."""
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| tf_keras.backend.set_image_data_format('channels_last')
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| temporal_strides = [1, 1, 1, 1]
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| temporal_kernel_sizes = [(3, 3, 3), (3, 1, 3, 1), (3, 1, 3, 1, 3, 1),
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| (1, 3, 1)]
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| use_self_gating = [True, False, True, False]
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| network = resnet_3d.ResNet3D(
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| model_id=model_id,
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| temporal_strides=temporal_strides,
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| temporal_kernel_sizes=temporal_kernel_sizes,
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| use_self_gating=use_self_gating,
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| stem_type=stem_type,
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| se_ratio=se_ratio,
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| init_stochastic_depth_rate=init_stochastic_depth_rate)
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| inputs = tf_keras.Input(shape=(8, input_size, input_size, 3), batch_size=1)
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| endpoints = network(inputs)
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| self.assertAllEqual([
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| 1, 2, input_size / 2**2, input_size / 2**2, 64 * endpoint_filter_scale
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| ], endpoints['2'].shape.as_list())
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| self.assertAllEqual([
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| 1, 2, input_size / 2**3, input_size / 2**3, 128 * endpoint_filter_scale
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| ], endpoints['3'].shape.as_list())
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| self.assertAllEqual([
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| 1, 2, input_size / 2**4, input_size / 2**4, 256 * endpoint_filter_scale
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| ], endpoints['4'].shape.as_list())
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| self.assertAllEqual([
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| 1, 2, input_size / 2**5, input_size / 2**5, 512 * endpoint_filter_scale
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| ], endpoints['5'].shape.as_list())
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| def test_serialize_deserialize(self):
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| kwargs = dict(
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| model_id=50,
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| temporal_strides=[1, 1, 1, 1],
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| temporal_kernel_sizes=[(3, 3, 3), (3, 1, 3, 1), (3, 1, 3, 1, 3, 1),
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| (1, 3, 1)],
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| stem_type='v0',
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| stem_conv_temporal_kernel_size=5,
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| stem_conv_temporal_stride=2,
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| stem_pool_temporal_stride=2,
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| se_ratio=0.0,
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| use_self_gating=None,
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| init_stochastic_depth_rate=0.0,
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| use_sync_bn=False,
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| activation='relu',
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| norm_momentum=0.99,
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| norm_epsilon=0.001,
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| kernel_initializer='VarianceScaling',
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| kernel_regularizer=None,
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| bias_regularizer=None,
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| )
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| network = resnet_3d.ResNet3D(**kwargs)
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| expected_config = dict(kwargs)
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| self.assertEqual(network.get_config(), expected_config)
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| new_network = resnet_3d.ResNet3D.from_config(network.get_config())
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| _ = new_network.to_json()
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| self.assertAllEqual(network.get_config(), new_network.get_config())
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| if __name__ == '__main__':
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| tf.test.main()
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|