示例#1
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    def test_model_variables(self):
        input_shape = (1, 512, 512, 3)
        model = efficientdet_keras.EfficientDetNet('efficientdet-d0')
        model.build(input_shape)
        eager_train_vars = sorted(
            [var.name for var in model.trainable_variables])
        eager_model_vars = sorted([var.name for var in model.variables])
        with tf.Graph().as_default():
            feats = tf.ones([1, 512, 512, 3])
            model = efficientdet_keras.EfficientDetNet('efficientdet-d0')
            model.build(input_shape)
            keras_train_vars = sorted(
                [var.name for var in model.trainable_variables])
            keras_model_vars = sorted([var.name for var in model.variables])
        with tf.Graph().as_default():
            feats = tf.ones([1, 512, 512, 3])
            legacy_arch.efficientdet(feats, 'efficientdet-d0')
            legacy_train_vars = sorted(
                [var.name for var in tf.trainable_variables()])
            legacy_model_vars = sorted(
                [var.name for var in tf.global_variables()])

        self.assertEqual(keras_train_vars, legacy_train_vars)
        self.assertEqual(keras_model_vars, legacy_model_vars)
        self.assertEqual(eager_train_vars, legacy_train_vars)
        self.assertEqual(eager_model_vars, legacy_model_vars)
 def test_model_variables(self):
     input_shape = (1, 512, 512, 3)
     model = efficientdet_keras.EfficientDetNet('efficientdet-d0')
     model.build(input_shape)
     eager_train_vars = sorted(
         [var.name for var in model.trainable_variables])
     eager_model_vars = sorted([var.name for var in model.variables])
     with tf.Graph().as_default():
         feats = tf.ones([1, 512, 512, 3])
         model = efficientdet_keras.EfficientDetNet('efficientdet-d0')
         model(feats, True)
         keras_train_vars = sorted(
             [var.name for var in tf.trainable_variables()])
         keras_model_vars = sorted(
             [var.name for var in tf.global_variables()])
         keras_update_ops = [
             op.name for op in tf.get_collection(tf.GraphKeys.UPDATE_OPS)
         ]
     with tf.Graph().as_default():
         feats = tf.ones([1, 512, 512, 3])
         legacy_arch.efficientdet(feats, 'efficientdet-d0')
         legacy_train_vars = sorted(
             [var.name for var in tf.trainable_variables()])
         legacy_model_vars = sorted(
             [var.name for var in tf.global_variables()])
         legacy_update_ops = [
             op.name for op in tf.get_collection(tf.GraphKeys.UPDATE_OPS)
         ]
     self.assertEqual(keras_train_vars, legacy_train_vars)
     self.assertEqual(keras_model_vars, legacy_model_vars)
     self.assertEqual(eager_train_vars, legacy_train_vars)
     self.assertEqual(eager_model_vars, legacy_model_vars)
     self.assertAllEqual(keras_update_ops, legacy_update_ops)
示例#3
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    def test_model_variables(self):
        with tf.Graph().as_default():
            feats = tf.random.uniform([1, 512, 512, 3])
            efficientdet_arch_keras.efficientdet('efficientdet-d0')(feats)
            vars1 = [var.name for var in tf.global_variables()]

        with tf.Graph().as_default():
            feats = tf.random.uniform([1, 512, 512, 3])
            legacy_arch.efficientdet(feats, 'efficientdet-d0')
            vars2 = [var.name for var in tf.global_variables()]

        self.assertEqual(vars1, vars2)
示例#4
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 def build_model(self, keras=False):
     tf.compat.v1.reset_default_graph()
     inputs_shape = [1, 512, 512, 3]
     inputs = tf.ones(shape=inputs_shape, name='input', dtype=tf.float32)
     if not keras:
         legacy_arch.efficientdet(inputs,
                                  model_name='efficientdet-d0',
                                  is_training_bn=False,
                                  image_size=512)
     else:
         efficientdet_arch_keras.efficientdet(inputs,
                                              model_name='efficientdet-d0',
                                              is_training_bn=False,
                                              image_size=512)
     return [n.name for n in tf.global_variables()]
  def test_model_output(self):
    inputs_shape = [1, 512, 512, 3]
    config = hparams_config.get_efficientdet_config('efficientdet-d0')
    tmp_ckpt = os.path.join(tempfile.mkdtemp(), 'ckpt')
    with tf.Session(graph=tf.Graph()) as sess:
      feats = tf.ones(inputs_shape)
      tf.random.set_random_seed(SEED)
      model = efficientdet_keras.EfficientDetNet(config=config)
      outputs = model(feats)
      sess.run(tf.global_variables_initializer())
      keras_class_out, keras_box_out = sess.run(outputs)
      model.save_weights(tmp_ckpt)
    with tf.Session(graph=tf.Graph()) as sess:
      feats = tf.ones(inputs_shape)
      tf.random.set_random_seed(SEED)
      feats = legacy_arch.efficientdet(feats, config=config)
      sess.run(tf.global_variables_initializer())
      legacy_class_out, legacy_box_out = sess.run(feats)
    for i in range(3, 8):
      self.assertAllClose(
          keras_class_out[i - 3], legacy_class_out[i], rtol=1e-4, atol=1e-4)
      self.assertAllClose(
          keras_box_out[i - 3], legacy_box_out[i], rtol=1e-4, atol=1e-4)

    feats = tf.ones(inputs_shape)
    model = efficientdet_keras.EfficientDetNet(config=config)
    model.load_weights(tmp_ckpt)
    eager_class_out, eager_box_out = model(feats)
    for i in range(3, 8):
      self.assertAllClose(
          eager_class_out[i - 3], legacy_class_out[i], rtol=1e-4, atol=1e-4)
      self.assertAllClose(
          eager_box_out[i - 3], legacy_box_out[i], rtol=1e-4, atol=1e-4)
示例#6
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    def test_model_output(self):
        inputs_shape = [1, 512, 512, 3]
        config = hparams_config.get_efficientdet_config('efficientdet-d0')
        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            feats = efficientdet_arch_keras.build_backbone(feats, config)
            feats = efficientdet_arch_keras.build_feature_network(
                feats, config)
            feats = efficientdet_arch_keras.build_class_and_box_outputs(
                feats, config)
            # TODO(tanmingxing): Fix the failure for keras Model.
            # feats = efficientdet_arch_keras.EfficientDetModel(config=config)(feats)
            sess.run(tf.global_variables_initializer())
            keras_class_out, keras_box_out = sess.run(feats)
        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            feats = legacy_arch.efficientdet(feats, config=config)
            sess.run(tf.global_variables_initializer())
            legacy_class_out, legacy_box_out = sess.run(feats)
        for i in range(3, 8):
            self.assertAllEqual(keras_class_out[i - 3], legacy_class_out[i])
            self.assertAllEqual(keras_box_out[i - 3], legacy_box_out[i])

        feats = tf.ones(inputs_shape)
        tf.random.set_random_seed(SEED)
        model = efficientdet_arch_keras.EfficientDetModel(config=config)
        eager_class_out, eager_box_out = model(feats)
        for i in range(3, 8):
            # TODO(tanmingxing): fix the failing case.
            self.assertAllEqual(eager_class_out[i - 3], legacy_class_out[i])
            self.assertAllEqual(eager_box_out[i - 3], legacy_box_out[i])
示例#7
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    def test_model_output(self):
        inputs_shape = [1, 512, 512, 3]
        config = hparams_config.get_efficientdet_config('efficientdet-d0')
        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            # feats = efficientdet_arch_keras.build_backbone(feats, config)
            # feats = efficientdet_arch_keras.build_feature_network(feats, config)
            # v = efficientdet_arch_keras.build_class_and_box_outputs(feats, config)
            v = efficientdet_arch_keras.EfficientDetModel(config=config)(feats)
            sess.run(tf.global_variables_initializer())
            keras_class_out, keras_box_out = sess.run(v)
        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            feats = legacy_arch.efficientdet(feats, config=config)
            sess.run(tf.global_variables_initializer())
            legacy_class_out, legacy_box_out = sess.run(feats)
        for i in range(3, 8):
            self.assertAllClose(keras_class_out[i - 3],
                                legacy_class_out[i],
                                rtol=1e-4,
                                atol=1e-4)
            self.assertAllClose(keras_box_out[i - 3],
                                legacy_box_out[i],
                                rtol=1e-4,
                                atol=1e-4)

        feats = tf.ones(inputs_shape)
        tf.random.set_random_seed(SEED)
        model = efficientdet_arch_keras.EfficientDetModel(config=config)
        eager_class_out, eager_box_out = model(feats)  # pylint: disable=unused-variable
示例#8
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 def _model_fn(inputs):
     return efficientdet_arch.efficientdet(
         inputs,
         model_name='efficientdet-d0',
         is_training_bn=is_training,
         precision=precision,
         image_size=512)
    def test_model_output(self):
        inputs_shape = [1, 512, 512, 3]
        config = hparams_config.get_efficientdet_config('efficientdet-d0')
        config.heads = ['object_detection', 'segmentation']
        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            model = efficientdet_keras.EfficientDetNet(config=config)
            outputs = model(feats, True)
            sess.run(tf.global_variables_initializer())
            keras_class_out, keras_box_out, _ = sess.run(outputs)
            grads = tf.nest.map_structure(
                lambda output: tf.gradients(output, feats), outputs)
            keras_class_grads, keras_box_grads, _ = sess.run(grads)
        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            outputs = legacy_arch.efficientdet(feats, config=config)
            sess.run(tf.global_variables_initializer())
            legacy_class_out, legacy_box_out = sess.run(outputs)
            grads = tf.nest.map_structure(
                lambda output: tf.gradients(output, feats), outputs)
            legacy_class_grads, legacy_box_grads = sess.run(grads)

        for i in range(3, 8):
            self.assertAllEqual(keras_class_out[i - 3], legacy_class_out[i])
            self.assertAllEqual(keras_box_out[i - 3], legacy_box_out[i])
            self.assertAllEqual(keras_class_grads[i - 3],
                                legacy_class_grads[i])
            self.assertAllEqual(keras_box_grads[i - 3], legacy_box_grads[i])
示例#10
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    def test_model_output(self):
        inputs_shape = [1, 512, 512, 3]
        config = hparams_config.get_efficientdet_config('efficientdet-d0')
        config.heads = ['object_detection', 'segmentation']
        tmp_ckpt = os.path.join(tempfile.mkdtemp(), 'ckpt')
        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            model = efficientdet_keras.EfficientDetNet(config=config)
            outputs = model(feats, True)
            sess.run(tf.global_variables_initializer())
            keras_class_out, keras_box_out, keras_seg_out = sess.run(outputs)
            grads = tf.nest.map_structure(
                lambda output: tf.gradients(output, feats), outputs)
            keras_class_grads, keras_box_grads, keras_seg_grads = sess.run(
                grads)
            model.save_weights(tmp_ckpt)
        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            outputs = legacy_arch.efficientdet(feats, config=config)
            sess.run(tf.global_variables_initializer())
            legacy_class_out, legacy_box_out = sess.run(outputs)
            grads = tf.nest.map_structure(
                lambda output: tf.gradients(output, feats), outputs)
            legacy_class_grads, legacy_box_grads = sess.run(grads)

        for i in range(3, 8):
            self.assertAllClose(keras_class_out[i - 3],
                                legacy_class_out[i],
                                rtol=1e-4,
                                atol=1e-4)
            self.assertAllClose(keras_box_out[i - 3],
                                legacy_box_out[i],
                                rtol=1e-4,
                                atol=1e-4)
            self.assertAllClose(keras_class_grads[i - 3],
                                legacy_class_grads[i],
                                rtol=1e-4,
                                atol=1e-4)
            self.assertAllClose(keras_box_grads[i - 3],
                                legacy_box_grads[i],
                                rtol=1e-4,
                                atol=1e-4)

        feats = tf.ones(inputs_shape)
        model = efficientdet_keras.EfficientDetNet(config=config)
        model.load_weights(tmp_ckpt)
        eager_class_out, eager_box_out, eager_seg_out = model(feats, True)
        for i in range(3, 8):
            self.assertAllClose(eager_class_out[i - 3],
                                legacy_class_out[i],
                                rtol=1e-4,
                                atol=1e-4)
            self.assertAllClose(eager_box_out[i - 3],
                                legacy_box_out[i],
                                rtol=1e-4,
                                atol=1e-4)
        self.assertAllClose(eager_seg_out, keras_seg_out, rtol=1e-4, atol=1e-4)
示例#11
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 def test_model_variables(self):
     feats = tf.ones([1, 512, 512, 3])
     model = efficientdet_arch_keras.efficientdet('efficientdet-d0')
     model(feats)
     vars1 = [var.name for var in model.trainable_variables]
     vars3 = [var.name for var in model.variables]
     with tf.Graph().as_default():
         feats = tf.ones([1, 512, 512, 3])
         legacy_arch.efficientdet(feats, 'efficientdet-d0')
         vars2 = [var.name for var in tf.trainable_variables()]
         vars4 = [var.name for var in tf.global_variables()]
     vars1.sort()
     vars2.sort()
     self.assertEqual(vars1, vars2)
     vars3.sort()
     vars4.sort()
     self.assertEqual(vars3, vars4)
示例#12
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 def build_model(self,
                 model_name,
                 isize,
                 is_training=False,
                 data_format='channels_last'):
     if isinstance(isize, int):
         isize = (isize, isize)
     if data_format == 'channels_first':
         inputs_shape = [1, 3, isize[0], isize[1]]
     else:
         inputs_shape = [1, isize[0], isize[1], 3]
     inputs = tf.ones(shape=inputs_shape, name='input', dtype=tf.float32)
     efficientdet_arch.efficientdet(inputs,
                                    model_name=model_name,
                                    is_training_bn=is_training,
                                    image_size=isize,
                                    data_format=data_format)
     return utils.num_params_flops(False)
示例#13
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 def build_model(self,
                 model_name,
                 isize=None,
                 is_training=False,
                 data_format='channels_last'):
     config = hparams_config.get_efficientdet_config(model_name)
     config.image_size = isize or config.image_size
     isize = utils.parse_image_size(config.image_size)
     if data_format == 'channels_first':
         inputs_shape = [1, 3, isize[0], isize[1]]
     else:
         inputs_shape = [1, isize[0], isize[1], 3]
     inputs = tf.ones(shape=inputs_shape, name='input', dtype=tf.float32)
     efficientdet_arch.efficientdet(inputs,
                                    model_name=model_name,
                                    is_training_bn=is_training,
                                    image_size=isize,
                                    data_format=data_format)
     return utils.num_params_flops(False)
    def test_model_variables(self):
        # TODO(tanmingxing): Re-enable this code once pass internal tests.
        # feats = tf.ones([1, 512, 512, 3])
        # model = efficientdet_arch_keras.efficientdet('efficientdet-d0')
        # model(feats)
        # vars1 = sorted([var.name for var in model.trainable_variables])
        # vars2 = sorted([var.name for var in model.variables])
        with tf.Graph().as_default():
            feats = tf.ones([1, 512, 512, 3])
            model = efficientdet_arch_keras.efficientdet('efficientdet-d0')
            model(feats)
            vars3 = sorted([var.name for var in model.trainable_variables])
            vars4 = sorted([var.name for var in model.variables])
        with tf.Graph().as_default():
            feats = tf.ones([1, 512, 512, 3])
            legacy_arch.efficientdet(feats, 'efficientdet-d0')
            vars5 = sorted([var.name for var in tf.trainable_variables()])
            vars6 = sorted([var.name for var in tf.global_variables()])

        # self.assertEqual(vars1, vars3)
        self.assertEqual(vars3, vars5)
        # self.assertEqual(vars2, vars4)
        self.assertEqual(vars4, vars6)
示例#15
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    def test_model_output(self):
        # TODO(fsx950223): Fix the test case
        inputs_shape = [1, 512, 512, 3]
        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            _, class_outputs1, box_outputs1 = efficientdet_arch_keras.efficientdet(
                'efficientdet-d0')(feats)
            sess.run(tf.global_variables_initializer())
            class_output1, box_output1 = sess.run([class_outputs1, box_outputs1])
        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            class_outputs2, box_outputs2 = legacy_arch.efficientdet(
                feats, 'efficientdet-d0')
            sess.run(tf.global_variables_initializer())
            class_output2, box_output2 = sess.run([class_outputs2, box_outputs2])

        for i in range(3, 8):
            self.assertAllEqual(class_output1[i], class_output2[i])
            self.assertAllEqual(box_output1[i], box_output2[i])
示例#16
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    def build_model(self, inputs: tf.Tensor,
                    is_training: bool) -> List[tf.Tensor]:
        """Build model with inputs and labels and print out model stats."""
        tf.logging.info('start building model')
        if self.model_name.startswith('efficientdet'):
            cls_outputs, box_outputs = efficientdet_arch.efficientdet(
                inputs,
                model_name=self.model_name,
                is_training_bn=is_training,
                use_bfloat16=False)
        elif self.model_name.startswith('retinanet'):
            cls_outputs, box_outputs = retinanet_arch.retinanet(
                inputs,
                model_name=self.model_name,
                is_training_bn=is_training,
                use_bfloat16=False)

        print('backbone+fpn+box params/flops = {:.6f}M, {:.9f}B'.format(
            *utils.num_params_flops()))

        all_outputs = list(cls_outputs.values()) + list(box_outputs.values())
        return all_outputs
    def test_model_output(self):
        inputs_shape = [1, 512, 512, 3]
        config = hparams_config.get_efficientdet_config('efficientdet-d0')
        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            feats = efficientdet_arch_keras.build_backbone(feats, config)
            feats = efficientdet_arch_keras.build_feature_network(
                feats, config)
            feats = efficientdet_arch_keras.build_class_and_box_outputs(
                feats, config)
            sess.run(tf.global_variables_initializer())
            class_output1, box_output1 = sess.run(feats)
        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            feats = legacy_arch.efficientdet(feats, config=config)
            sess.run(tf.global_variables_initializer())
            class_output2, box_output2 = sess.run(feats)
        for i in range(3, 8):
            self.assertAllEqual(class_output1[i], class_output2[i])
            self.assertAllEqual(box_output1[i], box_output2[i])

        with tf.Session(graph=tf.Graph()) as sess:
            feats = tf.ones(inputs_shape)
            tf.random.set_random_seed(SEED)
            feats = efficientdet_arch_keras.efficientdet(config=config)(feats)
            sess.run(tf.global_variables_initializer())
            class_list, box_list = sess.run(feats)
            for i in range(config.min_level, config.max_level + 1):
                class_output3[i] = class_list[i - config.min_level]
                box_outputs3[i] = box_list[i - config.min_level]
        for i in range(3, 8):
            # Failing.
            self.assertAllEqual(class_output1[i], class_output3[i])
            self.assertAllEqual(box_output1[i], box_output3[i])