DR-App / object_detection /export_tflite_ssd_graph.py
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# Copyright 2018 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"""Exports an SSD detection model to use with tf-lite.
Outputs file:
* A tflite compatible frozen graph - $output_directory/tflite_graph.pb
The exported graph has the following input and output nodes.
Inputs:
'normalized_input_image_tensor': a float32 tensor of shape
[1, height, width, 3] containing the normalized input image. Note that the
height and width must be compatible with the height and width configured in
the fixed_shape_image resizer options in the pipeline config proto.
In floating point Mobilenet model, 'normalized_image_tensor' has values
between [-1,1). This typically means mapping each pixel (linearly)
to a value between [-1, 1]. Input image
values between 0 and 255 are scaled by (1/128.0) and then a value of
-1 is added to them to ensure the range is [-1,1).
In quantized Mobilenet model, 'normalized_image_tensor' has values between [0,
255].
In general, see the `preprocess` function defined in the feature extractor class
in the object_detection/models directory.
Outputs:
If add_postprocessing_op is true: frozen graph adds a
TFLite_Detection_PostProcess custom op node has 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
else:
the graph has two outputs:
'raw_outputs/box_encodings': a float32 tensor of shape [1, num_anchors, 4]
containing the encoded box predictions.
'raw_outputs/class_predictions': a float32 tensor of shape
[1, num_anchors, num_classes] containing the class scores for each anchor
after applying score conversion.
Example Usage:
--------------
python object_detection/export_tflite_ssd_graph \
--pipeline_config_path path/to/ssd_mobilenet.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:
- tflite_graph.pbtxt
- tflite_graph.pb
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 NMS iou_threshold to be 0.5 and
NMS score_threshold to be 0.0):
python object_detection/export_tflite_ssd_graph \
--pipeline_config_path path/to/ssd_mobilenet.config \
--trained_checkpoint_prefix path/to/model.ckpt \
--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 \
} \
} \
} \
} \
"
"""
import tensorflow as tf
from google.protobuf import text_format
from object_detection import export_tflite_ssd_graph_lib
from object_detection.protos import pipeline_pb2
flags = tf.app.flags
flags.DEFINE_string('output_directory', None, 'Path to write outputs.')
flags.DEFINE_string(
'pipeline_config_path', None,
'Path to a pipeline_pb2.TrainEvalPipelineConfig config '
'file.')
flags.DEFINE_string('trained_checkpoint_prefix', None, 'Checkpoint prefix.')
flags.DEFINE_integer('max_detections', 10,
'Maximum number of detections (boxes) to show.')
flags.DEFINE_integer('max_classes_per_detection', 1,
'Number of classes to display per detection box.')
flags.DEFINE_integer(
'detections_per_class', 100,
'Number of anchors used per class in Regular Non-Max-Suppression.')
flags.DEFINE_bool('add_postprocessing_op', True,
'Add TFLite custom op for postprocessing to the graph.')
flags.DEFINE_bool(
'use_regular_nms', False,
'Flag to set postprocessing op to use Regular NMS instead of Fast NMS.')
flags.DEFINE_string(
'config_override', '', 'pipeline_pb2.TrainEvalPipelineConfig '
'text proto to override pipeline_config_path.')
FLAGS = flags.FLAGS
def main(argv):
del argv # Unused.
flags.mark_flag_as_required('output_directory')
flags.mark_flag_as_required('pipeline_config_path')
flags.mark_flag_as_required('trained_checkpoint_prefix')
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)
export_tflite_ssd_graph_lib.export_tflite_graph(
pipeline_config, FLAGS.trained_checkpoint_prefix, FLAGS.output_directory,
FLAGS.add_postprocessing_op, FLAGS.max_detections,
FLAGS.max_classes_per_detection, FLAGS.use_regular_nms)
if __name__ == '__main__':
tf.app.run(main)