Beispiel #1
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 def testCreateVariables(self):
     height, width = 3, 3
     images = random_ops.random_uniform((5, height, width, 3), seed=1)
     normalization.instance_norm(images, center=True, scale=True)
     beta = contrib_variables.get_variables_by_name('beta')[0]
     gamma = contrib_variables.get_variables_by_name('gamma')[0]
     self.assertEqual('InstanceNorm/beta', beta.op.name)
     self.assertEqual('InstanceNorm/gamma', gamma.op.name)
Beispiel #2
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 def testReuseVariables(self):
     height, width = 3, 3
     images = random_ops.random_uniform((5, height, width, 3), seed=1)
     normalization.instance_norm(images, scale=True, scope='IN')
     normalization.instance_norm(images, scale=True, scope='IN', reuse=True)
     beta = contrib_variables.get_variables_by_name('beta')
     gamma = contrib_variables.get_variables_by_name('gamma')
     self.assertEqual(1, len(beta))
     self.assertEqual(1, len(gamma))
Beispiel #3
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 def testValueCorrectWithReuseVars(self):
     height, width = 3, 3
     image_shape = (10, height, width, 3)
     images = random_ops.random_uniform(image_shape, seed=1)
     output_train = normalization.instance_norm(images, scope='IN')
     output_eval = normalization.instance_norm(
         images, scope='IN', reuse=True)
     with self.cached_session() as sess:
         sess.run(variables.global_variables_initializer())
         # output_train and output_eval should be the same.
         train_np, eval_np = sess.run([output_train, output_eval])
         self.assertAllClose(train_np, eval_np)
Beispiel #4
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    def doOutputTest(self, input_shape, data_format, tol=1e-3):
        axis = -1 if data_format == 'NHWC' else 1
        for mu in (0.0, 1e2):
            for sigma in (1.0, 0.1):
                # Determine shape of Tensor after normalization.
                reduced_shape = (input_shape[0], input_shape[axis])
                expected_mean = np.zeros(reduced_shape)
                expected_var = np.ones(reduced_shape)

                # Determine axes that will be normalized.
                reduced_axes = list(range(len(input_shape)))
                del reduced_axes[axis]
                del reduced_axes[0]
                reduced_axes = tuple(reduced_axes)

                inputs = random_ops.random_uniform(
                    input_shape, seed=0) * sigma + mu
                output_op = normalization.instance_norm(
                    inputs, center=False, scale=False, data_format=data_format)
                with self.cached_session() as sess:
                    sess.run(variables.global_variables_initializer())
                    outputs = sess.run(output_op)
                    # Make sure that there are no NaNs
                    self.assertFalse(np.isnan(outputs).any())
                    mean = np.mean(outputs, axis=reduced_axes)
                    var = np.var(outputs, axis=reduced_axes)
                    # The mean and variance of each example should be close to 0 and 1
                    # respectively.
                    self.assertAllClose(
                        expected_mean, mean, rtol=tol, atol=tol)
                    self.assertAllClose(expected_var, var, rtol=tol, atol=tol)
Beispiel #5
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 def testCreateOpFloat64(self):
     height, width = 3, 3
     images = random_ops.random_uniform(
         (5, height, width, 3), dtype=dtypes.float64, seed=1)
     output = normalization.instance_norm(images)
     self.assertStartsWith(
         output.op.name, 'InstanceNorm/instancenorm')
     self.assertListEqual([5, height, width, 3], output.shape.as_list())
Beispiel #6
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 def testCreateOpNoScaleCenter(self):
     height, width = 3, 3
     images = random_ops.random_uniform(
         (5, height, width, 3), dtype=dtypes.float64, seed=1)
     output = normalization.instance_norm(images, center=False, scale=False)
     self.assertStartsWith(
         output.op.name, 'InstanceNorm/instancenorm')
     self.assertListEqual([5, height, width, 3], output.shape.as_list())
     self.assertEqual(
         0, len(contrib_variables.get_variables_by_name('beta')))
     self.assertEqual(
         0, len(contrib_variables.get_variables_by_name('gamma')))
Beispiel #7
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 def testParamsShapeNotFullyDefinedNHWC(self):
     inputs = array_ops.placeholder(dtypes.float32, shape=(3, 4, None))
     with self.assertRaisesRegexp(ValueError, 'undefined channels dimension'):
         normalization.instance_norm(inputs, data_format='NHWC')
Beispiel #8
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 def testBadDataFormat(self):
     inputs = array_ops.placeholder(dtypes.float32, shape=(2, 5, 5))
     with self.assertRaisesRegexp(ValueError,
                                  'data_format has to be either NCHW or NHWC.'):
         normalization.instance_norm(inputs, data_format='NHCW')
Beispiel #9
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 def testUnknownShape(self):
     inputs = array_ops.placeholder(dtypes.float32)
     with self.assertRaisesRegexp(ValueError, 'undefined rank'):
         normalization.instance_norm(inputs)