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imagenet_test.py
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imagenet_test.py
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# Copyright 2017 The TensorFlow Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ==============================================================================
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import unittest
import tensorflow as tf # pylint: disable=g-bad-import-order
from official.resnet import imagenet_main
from official.utils.testing import integration
tf.logging.set_verbosity(tf.logging.ERROR)
_BATCH_SIZE = 32
_LABEL_CLASSES = 1001
class BaseTest(tf.test.TestCase):
def tearDown(self):
super(BaseTest, self).tearDown()
tf.gfile.DeleteRecursively(self.get_temp_dir())
def _tensor_shapes_helper(self, resnet_size, version, dtype, with_gpu):
"""Checks the tensor shapes after each phase of the ResNet model."""
def reshape(shape):
"""Returns the expected dimensions depending on if a GPU is being used."""
# If a GPU is used for the test, the shape is returned (already in NCHW
# form). When GPU is not used, the shape is converted to NHWC.
if with_gpu:
return shape
return shape[0], shape[2], shape[3], shape[1]
graph = tf.Graph()
with graph.as_default(), self.test_session(
graph=graph, use_gpu=with_gpu, force_gpu=with_gpu):
model = imagenet_main.ImagenetModel(
resnet_size=resnet_size,
data_format='channels_first' if with_gpu else 'channels_last',
version=version,
dtype=dtype
)
inputs = tf.random_uniform([1, 224, 224, 3])
output = model(inputs, training=True)
initial_conv = graph.get_tensor_by_name('resnet_model/initial_conv:0')
max_pool = graph.get_tensor_by_name('resnet_model/initial_max_pool:0')
block_layer1 = graph.get_tensor_by_name('resnet_model/block_layer1:0')
block_layer2 = graph.get_tensor_by_name('resnet_model/block_layer2:0')
block_layer3 = graph.get_tensor_by_name('resnet_model/block_layer3:0')
block_layer4 = graph.get_tensor_by_name('resnet_model/block_layer4:0')
reduce_mean = graph.get_tensor_by_name('resnet_model/final_reduce_mean:0')
dense = graph.get_tensor_by_name('resnet_model/final_dense:0')
self.assertAllEqual(initial_conv.shape, reshape((1, 64, 112, 112)))
self.assertAllEqual(max_pool.shape, reshape((1, 64, 56, 56)))
# The number of channels after each block depends on whether we're
# using the building_block or the bottleneck_block.
if resnet_size < 50:
self.assertAllEqual(block_layer1.shape, reshape((1, 64, 56, 56)))
self.assertAllEqual(block_layer2.shape, reshape((1, 128, 28, 28)))
self.assertAllEqual(block_layer3.shape, reshape((1, 256, 14, 14)))
self.assertAllEqual(block_layer4.shape, reshape((1, 512, 7, 7)))
self.assertAllEqual(reduce_mean.shape, reshape((1, 512, 1, 1)))
else:
self.assertAllEqual(block_layer1.shape, reshape((1, 256, 56, 56)))
self.assertAllEqual(block_layer2.shape, reshape((1, 512, 28, 28)))
self.assertAllEqual(block_layer3.shape, reshape((1, 1024, 14, 14)))
self.assertAllEqual(block_layer4.shape, reshape((1, 2048, 7, 7)))
self.assertAllEqual(reduce_mean.shape, reshape((1, 2048, 1, 1)))
self.assertAllEqual(dense.shape, (1, _LABEL_CLASSES))
self.assertAllEqual(output.shape, (1, _LABEL_CLASSES))
def tensor_shapes_helper(self, resnet_size, version, with_gpu=False):
self._tensor_shapes_helper(resnet_size=resnet_size, version=version,
dtype=tf.float32, with_gpu=with_gpu)
self._tensor_shapes_helper(resnet_size=resnet_size, version=version,
dtype=tf.float16, with_gpu=with_gpu)
def test_tensor_shapes_resnet_18_v1(self):
self.tensor_shapes_helper(18, version=1)
def test_tensor_shapes_resnet_18_v2(self):
self.tensor_shapes_helper(18, version=2)
def test_tensor_shapes_resnet_34_v1(self):
self.tensor_shapes_helper(34, version=1)
def test_tensor_shapes_resnet_34_v2(self):
self.tensor_shapes_helper(34, version=2)
def test_tensor_shapes_resnet_50_v1(self):
self.tensor_shapes_helper(50, version=1)
def test_tensor_shapes_resnet_50_v2(self):
self.tensor_shapes_helper(50, version=2)
def test_tensor_shapes_resnet_101_v1(self):
self.tensor_shapes_helper(101, version=1)
def test_tensor_shapes_resnet_101_v2(self):
self.tensor_shapes_helper(101, version=2)
def test_tensor_shapes_resnet_152_v1(self):
self.tensor_shapes_helper(152, version=1)
def test_tensor_shapes_resnet_152_v2(self):
self.tensor_shapes_helper(152, version=2)
def test_tensor_shapes_resnet_200_v1(self):
self.tensor_shapes_helper(200, version=1)
def test_tensor_shapes_resnet_200_v2(self):
self.tensor_shapes_helper(200, version=2)
@unittest.skipUnless(tf.test.is_built_with_cuda(), 'requires GPU')
def test_tensor_shapes_resnet_18_with_gpu_v1(self):
self.tensor_shapes_helper(18, version=1, with_gpu=True)
@unittest.skipUnless(tf.test.is_built_with_cuda(), 'requires GPU')
def test_tensor_shapes_resnet_18_with_gpu_v2(self):
self.tensor_shapes_helper(18, version=2, with_gpu=True)
@unittest.skipUnless(tf.test.is_built_with_cuda(), 'requires GPU')
def test_tensor_shapes_resnet_34_with_gpu_v1(self):
self.tensor_shapes_helper(34, version=1, with_gpu=True)
@unittest.skipUnless(tf.test.is_built_with_cuda(), 'requires GPU')
def test_tensor_shapes_resnet_34_with_gpu_v2(self):
self.tensor_shapes_helper(34, version=2, with_gpu=True)
@unittest.skipUnless(tf.test.is_built_with_cuda(), 'requires GPU')
def test_tensor_shapes_resnet_50_with_gpu_v1(self):
self.tensor_shapes_helper(50, version=1, with_gpu=True)
@unittest.skipUnless(tf.test.is_built_with_cuda(), 'requires GPU')
def test_tensor_shapes_resnet_50_with_gpu_v2(self):
self.tensor_shapes_helper(50, version=2, with_gpu=True)
@unittest.skipUnless(tf.test.is_built_with_cuda(), 'requires GPU')
def test_tensor_shapes_resnet_101_with_gpu_v1(self):
self.tensor_shapes_helper(101, version=1, with_gpu=True)
@unittest.skipUnless(tf.test.is_built_with_cuda(), 'requires GPU')
def test_tensor_shapes_resnet_101_with_gpu_v2(self):
self.tensor_shapes_helper(101, version=2, with_gpu=True)
@unittest.skipUnless(tf.test.is_built_with_cuda(), 'requires GPU')
def test_tensor_shapes_resnet_152_with_gpu_v1(self):
self.tensor_shapes_helper(152, version=1, with_gpu=True)
@unittest.skipUnless(tf.test.is_built_with_cuda(), 'requires GPU')
def test_tensor_shapes_resnet_152_with_gpu_v2(self):
self.tensor_shapes_helper(152, version=2, with_gpu=True)
@unittest.skipUnless(tf.test.is_built_with_cuda(), 'requires GPU')
def test_tensor_shapes_resnet_200_with_gpu_v1(self):
self.tensor_shapes_helper(200, version=1, with_gpu=True)
@unittest.skipUnless(tf.test.is_built_with_cuda(), 'requires GPU')
def test_tensor_shapes_resnet_200_with_gpu_v2(self):
self.tensor_shapes_helper(200, version=2, with_gpu=True)
def resnet_model_fn_helper(self, mode, version, dtype):
"""Tests that the EstimatorSpec is given the appropriate arguments."""
tf.train.create_global_step()
input_fn = imagenet_main.get_synth_input_fn()
dataset = input_fn(True, '', _BATCH_SIZE)
iterator = dataset.make_one_shot_iterator()
features, labels = iterator.get_next()
spec = imagenet_main.imagenet_model_fn(
features, labels, mode, {
'dtype': dtype,
'resnet_size': 50,
'data_format': 'channels_last',
'batch_size': _BATCH_SIZE,
'version': version,
'loss_scale': 128 if dtype == tf.float16 else 1,
})
predictions = spec.predictions
self.assertAllEqual(predictions['probabilities'].shape,
(_BATCH_SIZE, _LABEL_CLASSES))
self.assertEqual(predictions['probabilities'].dtype, tf.float32)
self.assertAllEqual(predictions['classes'].shape, (_BATCH_SIZE,))
self.assertEqual(predictions['classes'].dtype, tf.int64)
if mode != tf.estimator.ModeKeys.PREDICT:
loss = spec.loss
self.assertAllEqual(loss.shape, ())
self.assertEqual(loss.dtype, tf.float32)
if mode == tf.estimator.ModeKeys.EVAL:
eval_metric_ops = spec.eval_metric_ops
self.assertAllEqual(eval_metric_ops['accuracy'][0].shape, ())
self.assertAllEqual(eval_metric_ops['accuracy'][1].shape, ())
self.assertEqual(eval_metric_ops['accuracy'][0].dtype, tf.float32)
self.assertEqual(eval_metric_ops['accuracy'][1].dtype, tf.float32)
def test_resnet_model_fn_train_mode_v1(self):
self.resnet_model_fn_helper(tf.estimator.ModeKeys.TRAIN, version=1,
dtype=tf.float32)
def test_resnet_model_fn_train_mode_v2(self):
self.resnet_model_fn_helper(tf.estimator.ModeKeys.TRAIN, version=2,
dtype=tf.float32)
def test_resnet_model_fn_eval_mode_v1(self):
self.resnet_model_fn_helper(tf.estimator.ModeKeys.EVAL, version=1,
dtype=tf.float32)
def test_resnet_model_fn_eval_mode_v2(self):
self.resnet_model_fn_helper(tf.estimator.ModeKeys.EVAL, version=2,
dtype=tf.float32)
def test_resnet_model_fn_predict_mode_v1(self):
self.resnet_model_fn_helper(tf.estimator.ModeKeys.PREDICT, version=1,
dtype=tf.float32)
def test_resnet_model_fn_predict_mode_v2(self):
self.resnet_model_fn_helper(tf.estimator.ModeKeys.PREDICT, version=2,
dtype=tf.float32)
def _test_imagenetmodel_shape(self, version):
batch_size = 135
num_classes = 246
model = imagenet_main.ImagenetModel(
50, data_format='channels_last', num_classes=num_classes,
version=version)
fake_input = tf.random_uniform([batch_size, 224, 224, 3])
output = model(fake_input, training=True)
self.assertAllEqual(output.shape, (batch_size, num_classes))
def test_imagenetmodel_shape_v1(self):
self._test_imagenetmodel_shape(version=1)
def test_imagenetmodel_shape_v2(self):
self._test_imagenetmodel_shape(version=2)
def test_imagenet_end_to_end_synthetic_v1(self):
integration.run_synthetic(
main=imagenet_main.main, tmp_root=self.get_temp_dir(),
extra_flags=['-v', '1']
)
def test_imagenet_end_to_end_synthetic_v2(self):
integration.run_synthetic(
main=imagenet_main.main, tmp_root=self.get_temp_dir(),
extra_flags=['-v', '2']
)
def test_imagenet_end_to_end_synthetic_v1_tiny(self):
integration.run_synthetic(
main=imagenet_main.main, tmp_root=self.get_temp_dir(),
extra_flags=['-v', '1', '-rs', '18']
)
def test_imagenet_end_to_end_synthetic_v2_tiny(self):
integration.run_synthetic(
main=imagenet_main.main, tmp_root=self.get_temp_dir(),
extra_flags=['-v', '2', '-rs', '18']
)
def test_imagenet_end_to_end_synthetic_v1_huge(self):
integration.run_synthetic(
main=imagenet_main.main, tmp_root=self.get_temp_dir(),
extra_flags=['-v', '1', '-rs', '200']
)
def test_imagenet_end_to_end_synthetic_v2_huge(self):
integration.run_synthetic(
main=imagenet_main.main, tmp_root=self.get_temp_dir(),
extra_flags=['-v', '2', '-rs', '200']
)
if __name__ == '__main__':
tf.test.main()