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| r"""Exports TF2 detection SavedModel for conversion to TensorFlow Lite. |
| Link to the TF2 Detection Zoo: |
| https://github.com/tensorflow/models/blob/master/research/object_detection/g3doc/tf2_detection_zoo.md |
| The output folder will contain an intermediate SavedModel that can be used with |
| the TfLite converter. |
| NOTE: This only supports SSD meta-architectures for now. |
| One input: |
| image: a float32 tensor of shape[1, height, width, 3] containing the |
| *normalized* input image. |
| NOTE: See the `preprocess` function defined in the feature extractor class |
| in the object_detection/models directory. |
| Four Outputs: |
| detection_boxes: a float32 tensor of shape [1, num_boxes, 4] with box |
| locations |
| detection_classes: a float32 tensor of shape [1, num_boxes] |
| with class indices |
| detection_scores: a float32 tensor of shape [1, num_boxes] |
| with class scores |
| num_boxes: a float32 tensor of size 1 containing the number of detected boxes |
| Example Usage: |
| -------------- |
| python object_detection/export_tflite_graph_tf2.py \ |
| --pipeline_config_path path/to/ssd_model/pipeline.config \ |
| --trained_checkpoint_dir path/to/ssd_model/checkpoint \ |
| --output_directory path/to/exported_model_directory |
| The expected output SavedModel would be in the directory |
| path/to/exported_model_directory (which is created if it does not exist). |
| 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 1 (in which we change the NMS iou_threshold to be 0.5 and |
| NMS score_threshold to be 0.0): |
| python object_detection/export_tflite_model_tf2.py \ |
| --pipeline_config_path path/to/ssd_model/pipeline.config \ |
| --trained_checkpoint_dir path/to/ssd_model/checkpoint \ |
| --output_directory path/to/exported_model_directory |
| --config_override " \ |
| model{ \ |
| ssd{ \ |
| post_processing { \ |
| batch_non_max_suppression { \ |
| score_threshold: 0.0 \ |
| iou_threshold: 0.5 \ |
| } \ |
| } \ |
| } \ |
| } \ |
| " |
| Example Usage 2 (export CenterNet model for keypoint estimation task with fixed |
| shape resizer and customized input resolution): |
| python object_detection/export_tflite_model_tf2.py \ |
| --pipeline_config_path path/to/ssd_model/pipeline.config \ |
| --trained_checkpoint_dir path/to/ssd_model/checkpoint \ |
| --output_directory path/to/exported_model_directory \ |
| --keypoint_label_map_path path/to/label_map.txt \ |
| --max_detections 10 \ |
| --centernet_include_keypoints true \ |
| --config_override " \ |
| model{ \ |
| center_net { \ |
| image_resizer { \ |
| fixed_shape_resizer { \ |
| height: 320 \ |
| width: 320 \ |
| } \ |
| } \ |
| } \ |
| }" \ |
| """ |
| from absl import app |
| from absl import flags |
|
|
| import tensorflow.compat.v2 as tf |
| from google.protobuf import text_format |
| from object_detection import export_tflite_graph_lib_tf2 |
| from object_detection.protos import pipeline_pb2 |
|
|
| tf.enable_v2_behavior() |
|
|
| FLAGS = flags.FLAGS |
|
|
| flags.DEFINE_string( |
| 'pipeline_config_path', None, |
| 'Path to a pipeline_pb2.TrainEvalPipelineConfig config ' |
| 'file.') |
| flags.DEFINE_string('trained_checkpoint_dir', None, |
| 'Path to trained checkpoint directory') |
| 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_integer('max_detections', 10, |
| 'Maximum number of detections (boxes) to return.') |
| |
| flags.DEFINE_bool( |
| 'ssd_use_regular_nms', False, |
| 'Flag to set postprocessing op to use Regular NMS instead of Fast NMS ' |
| '(Default false).') |
| |
| flags.DEFINE_bool( |
| 'centernet_include_keypoints', False, |
| 'Whether to export the predicted keypoint tensors. Only CenterNet model' |
| ' supports this flag.' |
| ) |
| flags.DEFINE_string( |
| 'keypoint_label_map_path', None, |
| 'Path of the label map used by CenterNet keypoint estimation task. If' |
| ' provided, the label map path in the pipeline config will be replaced by' |
| ' this one. Note that it is only used when exporting CenterNet model for' |
| ' keypoint estimation task.' |
| ) |
|
|
|
|
| def main(argv): |
| del argv |
| flags.mark_flag_as_required('pipeline_config_path') |
| flags.mark_flag_as_required('trained_checkpoint_dir') |
| flags.mark_flag_as_required('output_directory') |
|
|
| pipeline_config = pipeline_pb2.TrainEvalPipelineConfig() |
|
|
| with tf.io.gfile.GFile(FLAGS.pipeline_config_path, 'r') as f: |
| text_format.Parse(f.read(), pipeline_config) |
| override_config = pipeline_pb2.TrainEvalPipelineConfig() |
| text_format.Parse(FLAGS.config_override, override_config) |
| pipeline_config.MergeFrom(override_config) |
|
|
| export_tflite_graph_lib_tf2.export_tflite_model( |
| pipeline_config, FLAGS.trained_checkpoint_dir, FLAGS.output_directory, |
| FLAGS.max_detections, FLAGS.ssd_use_regular_nms, |
| FLAGS.centernet_include_keypoints, FLAGS.keypoint_label_map_path) |
|
|
|
|
| if __name__ == '__main__': |
| app.run(main) |
|
|