Ejemplo n.º 1
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 def testAtrousFullyConvolutionalValues(self):
   """Verify dense feature extraction with atrous convolution."""
   nominal_stride = 32
   for output_stride in [4, 8, 16, 32, None]:
     with slim.arg_scope(resnet_utils.resnet_arg_scope()):
       with tf.Graph().as_default():
         with self.test_session() as sess:
           tf.set_random_seed(0)
           inputs = create_test_input(2, 81, 81, 3)
           # Dense feature extraction followed by subsampling.
           output, _ = self._resnet_small(inputs, None, is_training=False,
                                          global_pool=False,
                                          output_stride=output_stride)
           if output_stride is None:
             factor = 1
           else:
             factor = nominal_stride // output_stride
           output = resnet_utils.subsample(output, factor)
           # Make the two networks use the same weights.
           tf.get_variable_scope().reuse_variables()
           # Feature extraction at the nominal network rate.
           expected, _ = self._resnet_small(inputs, None, is_training=False,
                                            global_pool=False)
           sess.run(tf.initialize_all_variables())
           self.assertAllClose(output.eval(), expected.eval(),
                               atol=1e-4, rtol=1e-4)
Ejemplo n.º 2
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 def testEndPointsV2(self):
     """Test the end points of a tiny v2 bottleneck network."""
     bottleneck = resnet_v2.bottleneck
     blocks = [
         resnet_utils.Block('block1', bottleneck, [(4, 1, 1), (4, 1, 2)]),
         resnet_utils.Block('block2', bottleneck, [(8, 2, 1), (8, 2, 1)])
     ]
     inputs = create_test_input(2, 32, 16, 3)
     with slim.arg_scope(resnet_utils.resnet_arg_scope()):
         _, end_points = self._resnet_plain(inputs, blocks, scope='tiny')
     expected = [
         'tiny/block1/unit_1/bottleneck_v2/shortcut',
         'tiny/block1/unit_1/bottleneck_v2/conv1',
         'tiny/block1/unit_1/bottleneck_v2/conv2',
         'tiny/block1/unit_1/bottleneck_v2/conv3',
         'tiny/block1/unit_2/bottleneck_v2/conv1',
         'tiny/block1/unit_2/bottleneck_v2/conv2',
         'tiny/block1/unit_2/bottleneck_v2/conv3',
         'tiny/block2/unit_1/bottleneck_v2/shortcut',
         'tiny/block2/unit_1/bottleneck_v2/conv1',
         'tiny/block2/unit_1/bottleneck_v2/conv2',
         'tiny/block2/unit_1/bottleneck_v2/conv3',
         'tiny/block2/unit_2/bottleneck_v2/conv1',
         'tiny/block2/unit_2/bottleneck_v2/conv2',
         'tiny/block2/unit_2/bottleneck_v2/conv3'
     ]
     self.assertItemsEqual(expected, end_points)
Ejemplo n.º 3
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 def testClassificationEndPoints(self):
   global_pool = True
   num_classes = 10
   inputs = create_test_input(2, 224, 224, 3)
   with slim.arg_scope(resnet_utils.resnet_arg_scope()):
     logits, end_points = self._resnet_small(inputs, num_classes,
                                             global_pool=global_pool,
                                             scope='resnet')
   self.assertTrue(logits.op.name.startswith('resnet/logits'))
   self.assertListEqual(logits.get_shape().as_list(), [2, 1, 1, num_classes])
   self.assertTrue('predictions' in end_points)
   self.assertListEqual(end_points['predictions'].get_shape().as_list(),
                        [2, 1, 1, num_classes])
Ejemplo n.º 4
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 def testFullyConvolutionalUnknownHeightWidth(self):
   batch = 2
   height, width = 65, 65
   global_pool = False
   inputs = create_test_input(batch, None, None, 3)
   with slim.arg_scope(resnet_utils.resnet_arg_scope()):
     output, _ = self._resnet_small(inputs, None, global_pool=global_pool)
   self.assertListEqual(output.get_shape().as_list(),
                        [batch, None, None, 32])
   images = create_test_input(batch, height, width, 3)
   with self.test_session() as sess:
     sess.run(tf.initialize_all_variables())
     output = sess.run(output, {inputs: images.eval()})
     self.assertEqual(output.shape, (batch, 3, 3, 32))
Ejemplo n.º 5
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    def _atrousValues(self, bottleneck):
        """Verify the values of dense feature extraction by atrous convolution.

    Make sure that dense feature extraction by stack_blocks_dense() followed by
    subsampling gives identical results to feature extraction at the nominal
    network output stride using the simple self._stack_blocks_nondense() above.

    Args:
      bottleneck: The bottleneck function.
    """
        blocks = [
            resnet_utils.Block('block1', bottleneck, [(4, 1, 1), (4, 1, 2)]),
            resnet_utils.Block('block2', bottleneck, [(8, 2, 1), (8, 2, 2)]),
            resnet_utils.Block('block3', bottleneck, [(16, 4, 1), (16, 4, 2)]),
            resnet_utils.Block('block4', bottleneck, [(32, 8, 1), (32, 8, 1)])
        ]
        nominal_stride = 8

        # Test both odd and even input dimensions.
        height = 30
        width = 31
        with slim.arg_scope(resnet_utils.resnet_arg_scope()):
            with slim.arg_scope([slim.batch_norm], is_training=False):
                for output_stride in [1, 2, 4, 8, None]:
                    with tf.Graph().as_default():
                        with self.test_session() as sess:
                            tf.set_random_seed(0)
                            inputs = create_test_input(1, height, width, 3)
                            # Dense feature extraction followed by subsampling.
                            output = resnet_utils.stack_blocks_dense(
                                inputs, blocks, output_stride)
                            if output_stride is None:
                                factor = 1
                            else:
                                factor = nominal_stride // output_stride

                            output = resnet_utils.subsample(output, factor)
                            # Make the two networks use the same weights.
                            tf.get_variable_scope().reuse_variables()
                            # Feature extraction at the nominal network rate.
                            expected = self._stack_blocks_nondense(
                                inputs, blocks)
                            sess.run(tf.initialize_all_variables())
                            output, expected = sess.run([output, expected])
                            self.assertAllClose(output,
                                                expected,
                                                atol=1e-4,
                                                rtol=1e-4)
Ejemplo n.º 6
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 def testFullyConvolutionalEndpointShapes(self):
   global_pool = False
   num_classes = 10
   inputs = create_test_input(2, 321, 321, 3)
   with slim.arg_scope(resnet_utils.resnet_arg_scope()):
     _, end_points = self._resnet_small(inputs, num_classes,
                                        global_pool=global_pool,
                                        scope='resnet')
     endpoint_to_shape = {
         'resnet/block1': [2, 41, 41, 4],
         'resnet/block2': [2, 21, 21, 8],
         'resnet/block3': [2, 11, 11, 16],
         'resnet/block4': [2, 11, 11, 32]}
     for endpoint in endpoint_to_shape:
       shape = endpoint_to_shape[endpoint]
       self.assertListEqual(end_points[endpoint].get_shape().as_list(), shape)
Ejemplo n.º 7
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 def testClassificationShapes(self):
   global_pool = True
   num_classes = 10
   inputs = create_test_input(2, 224, 224, 3)
   with slim.arg_scope(resnet_utils.resnet_arg_scope()):
     _, end_points = self._resnet_small(inputs, num_classes,
                                        global_pool=global_pool,
                                        scope='resnet')
     endpoint_to_shape = {
         'resnet/block1': [2, 28, 28, 4],
         'resnet/block2': [2, 14, 14, 8],
         'resnet/block3': [2, 7, 7, 16],
         'resnet/block4': [2, 7, 7, 32]}
     for endpoint in endpoint_to_shape:
       shape = endpoint_to_shape[endpoint]
       self.assertListEqual(end_points[endpoint].get_shape().as_list(), shape)
Ejemplo n.º 8
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 def testUnknownBatchSize(self):
   batch = 2
   height, width = 65, 65
   global_pool = True
   num_classes = 10
   inputs = create_test_input(None, height, width, 3)
   with slim.arg_scope(resnet_utils.resnet_arg_scope()):
     logits, _ = self._resnet_small(inputs, num_classes,
                                    global_pool=global_pool,
                                    scope='resnet')
   self.assertTrue(logits.op.name.startswith('resnet/logits'))
   self.assertListEqual(logits.get_shape().as_list(),
                        [None, 1, 1, num_classes])
   images = create_test_input(batch, height, width, 3)
   with self.test_session() as sess:
     sess.run(tf.initialize_all_variables())
     output = sess.run(logits, {inputs: images.eval()})
     self.assertEqual(output.shape, (batch, 1, 1, num_classes))