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| # Lint as: python2, python3 | |
| # 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. | |
| # ============================================================================== | |
| r"""Tool to export an object detection model for inference. | |
| Prepares an object detection tensorflow graph for inference using model | |
| configuration and a trained checkpoint. Outputs inference | |
| graph, associated checkpoint files, a frozen inference graph and a | |
| SavedModel (https://tensorflow.github.io/serving/serving_basic.html). | |
| The inference graph contains one of three input nodes depending on the user | |
| specified option. | |
| * `image_tensor`: Accepts a uint8 4-D tensor of shape [None, None, None, 3] | |
| * `encoded_image_string_tensor`: Accepts a 1-D string tensor of shape [None] | |
| containing encoded PNG or JPEG images. Image resolutions are expected to be | |
| the same if more than 1 image is provided. | |
| * `tf_example`: Accepts a 1-D string tensor of shape [None] containing | |
| serialized TFExample protos. Image resolutions are expected to be the same | |
| if more than 1 image is provided. | |
| and the following output nodes returned by the model.postprocess(..): | |
| * `num_detections`: Outputs float32 tensors of the form [batch] | |
| that specifies the number of valid boxes per image in the batch. | |
| * `detection_boxes`: Outputs float32 tensors of the form | |
| [batch, num_boxes, 4] containing detected boxes. | |
| * `detection_scores`: Outputs float32 tensors of the form | |
| [batch, num_boxes] containing class scores for the detections. | |
| * `detection_classes`: Outputs float32 tensors of the form | |
| [batch, num_boxes] containing classes for the detections. | |
| * `raw_detection_boxes`: Outputs float32 tensors of the form | |
| [batch, raw_num_boxes, 4] containing detection boxes without | |
| post-processing. | |
| * `raw_detection_scores`: Outputs float32 tensors of the form | |
| [batch, raw_num_boxes, num_classes_with_background] containing class score | |
| logits for raw detection boxes. | |
| * `detection_masks`: (Optional) Outputs float32 tensors of the form | |
| [batch, num_boxes, mask_height, mask_width] containing predicted instance | |
| masks for each box if its present in the dictionary of postprocessed | |
| tensors returned by the model. | |
| * detection_multiclass_scores: (Optional) Outputs float32 tensor of shape | |
| [batch, num_boxes, num_classes_with_background] for containing class | |
| score distribution for detected boxes including background if any. | |
| * detection_features: (Optional) float32 tensor of shape | |
| [batch, num_boxes, roi_height, roi_width, depth] | |
| containing classifier features | |
| Notes: | |
| * This tool uses `use_moving_averages` from eval_config to decide which | |
| weights to freeze. | |
| Example Usage: | |
| -------------- | |
| python export_inference_graph.py \ | |
| --input_type image_tensor \ | |
| --pipeline_config_path path/to/ssd_inception_v2.config \ | |
| --trained_checkpoint_prefix path/to/model.ckpt \ | |
| --output_directory path/to/exported_model_directory | |
| The expected output would be in the directory | |
| path/to/exported_model_directory (which is created if it does not exist) | |
| with contents: | |
| - inference_graph.pbtxt | |
| - model.ckpt.data-00000-of-00001 | |
| - model.ckpt.info | |
| - model.ckpt.meta | |
| - frozen_inference_graph.pb | |
| + saved_model (a directory) | |
| Config overrides (see the `config_override` flag) are text protobufs | |
| (also of type pipeline_pb2.TrainEvalPipelineConfig) which are used to override | |
| certain fields in the provided pipeline_config_path. These are useful for | |
| making small changes to the inference graph that differ from the training or | |
| eval config. | |
| Example Usage (in which we change the second stage post-processing score | |
| threshold to be 0.5): | |
| python export_inference_graph.py \ | |
| --input_type image_tensor \ | |
| --pipeline_config_path path/to/ssd_inception_v2.config \ | |
| --trained_checkpoint_prefix path/to/model.ckpt \ | |
| --output_directory path/to/exported_model_directory \ | |
| --config_override " \ | |
| model{ \ | |
| faster_rcnn { \ | |
| second_stage_post_processing { \ | |
| batch_non_max_suppression { \ | |
| score_threshold: 0.5 \ | |
| } \ | |
| } \ | |
| } \ | |
| }" | |
| """ | |
| import tensorflow.compat.v1 as tf | |
| from google.protobuf import text_format | |
| from object_detection import exporter | |
| from object_detection.protos import pipeline_pb2 | |
| flags = tf.app.flags | |
| flags.DEFINE_string('input_type', 'image_tensor', 'Type of input node. Can be ' | |
| 'one of [`image_tensor`, `encoded_image_string_tensor`, ' | |
| '`tf_example`]') | |
| flags.DEFINE_string('input_shape', None, | |
| 'If input_type is `image_tensor`, this can explicitly set ' | |
| 'the shape of this input tensor to a fixed size. The ' | |
| 'dimensions are to be provided as a comma-separated list ' | |
| 'of integers. A value of -1 can be used for unknown ' | |
| 'dimensions. If not specified, for an `image_tensor, the ' | |
| 'default shape will be partially specified as ' | |
| '`[None, None, None, 3]`.') | |
| flags.DEFINE_string('pipeline_config_path', None, | |
| 'Path to a pipeline_pb2.TrainEvalPipelineConfig config ' | |
| 'file.') | |
| flags.DEFINE_string('trained_checkpoint_prefix', None, | |
| 'Path to trained checkpoint, typically of the form ' | |
| 'path/to/model.ckpt') | |
| flags.DEFINE_string('output_directory', None, 'Path to write outputs.') | |
| flags.DEFINE_string('config_override', '', | |
| 'pipeline_pb2.TrainEvalPipelineConfig ' | |
| 'text proto to override pipeline_config_path.') | |
| flags.DEFINE_boolean('write_inference_graph', False, | |
| 'If true, writes inference graph to disk.') | |
| flags.DEFINE_string('additional_output_tensor_names', None, | |
| 'Additional Tensors to output, to be specified as a comma ' | |
| 'separated list of tensor names.') | |
| flags.DEFINE_boolean('use_side_inputs', False, | |
| 'If True, uses side inputs as well as image inputs.') | |
| flags.DEFINE_string('side_input_shapes', None, | |
| 'If use_side_inputs is True, this explicitly sets ' | |
| 'the shape of the side input tensors to a fixed size. The ' | |
| 'dimensions are to be provided as a comma-separated list ' | |
| 'of integers. A value of -1 can be used for unknown ' | |
| 'dimensions. A `/` denotes a break, starting the shape of ' | |
| 'the next side input tensor. This flag is required if ' | |
| 'using side inputs.') | |
| flags.DEFINE_string('side_input_types', None, | |
| 'If use_side_inputs is True, this explicitly sets ' | |
| 'the type of the side input tensors. The ' | |
| 'dimensions are to be provided as a comma-separated list ' | |
| 'of types, each of `string`, `integer`, or `float`. ' | |
| 'This flag is required if using side inputs.') | |
| flags.DEFINE_string('side_input_names', None, | |
| 'If use_side_inputs is True, this explicitly sets ' | |
| 'the names of the side input tensors required by the model ' | |
| 'assuming the names will be a comma-separated list of ' | |
| 'strings. This flag is required if using side inputs.') | |
| tf.app.flags.mark_flag_as_required('pipeline_config_path') | |
| tf.app.flags.mark_flag_as_required('trained_checkpoint_prefix') | |
| tf.app.flags.mark_flag_as_required('output_directory') | |
| FLAGS = flags.FLAGS | |
| def main(_): | |
| pipeline_config = pipeline_pb2.TrainEvalPipelineConfig() | |
| with tf.gfile.GFile(FLAGS.pipeline_config_path, 'r') as f: | |
| text_format.Merge(f.read(), pipeline_config) | |
| text_format.Merge(FLAGS.config_override, pipeline_config) | |
| if FLAGS.input_shape: | |
| input_shape = [ | |
| int(dim) if dim != '-1' else None | |
| for dim in FLAGS.input_shape.split(',') | |
| ] | |
| else: | |
| input_shape = None | |
| if FLAGS.use_side_inputs: | |
| side_input_shapes, side_input_names, side_input_types = ( | |
| exporter.parse_side_inputs( | |
| FLAGS.side_input_shapes, | |
| FLAGS.side_input_names, | |
| FLAGS.side_input_types)) | |
| else: | |
| side_input_shapes = None | |
| side_input_names = None | |
| side_input_types = None | |
| if FLAGS.additional_output_tensor_names: | |
| additional_output_tensor_names = list( | |
| FLAGS.additional_output_tensor_names.split(',')) | |
| else: | |
| additional_output_tensor_names = None | |
| exporter.export_inference_graph( | |
| FLAGS.input_type, pipeline_config, FLAGS.trained_checkpoint_prefix, | |
| FLAGS.output_directory, input_shape=input_shape, | |
| write_inference_graph=FLAGS.write_inference_graph, | |
| additional_output_tensor_names=additional_output_tensor_names, | |
| use_side_inputs=FLAGS.use_side_inputs, | |
| side_input_shapes=side_input_shapes, | |
| side_input_names=side_input_names, | |
| side_input_types=side_input_types) | |
| if __name__ == '__main__': | |
| tf.app.run() | |