# 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"""Converts a trained checkpoint into a frozen model for mobile inference. Once you've trained a model using the `train.py` script, you can use this tool to convert it into a binary GraphDef file that can be loaded into the Android, iOS, or Raspberry Pi example code. Here's an example of how to run it: bazel run tensorflow/examples/speech_commands/freeze -- \ --sample_rate=16000 --dct_coefficient_count=40 --window_size_ms=20 \ --window_stride_ms=10 --clip_duration_ms=1000 \ --model_architecture=conv \ --start_checkpoint=/tmp/speech_commands_train/conv.ckpt-1300 \ --output_file=/tmp/my_frozen_graph.pb One thing to watch out for is that you need to pass in the same arguments for `sample_rate` and other command line variables here as you did for the training script. The resulting graph has an input for WAV-encoded data named 'wav_data', one for raw PCM data (as floats in the range -1.0 to 1.0) called 'decoded_sample_data', and the output is called 'labels_softmax'. """ from __future__ import absolute_import from __future__ import division from __future__ import print_function import argparse import os.path import sys import tensorflow as tf from tensorflow.contrib.framework.python.ops import audio_ops as contrib_audio import input_data import models from tensorflow.python.framework import graph_util FLAGS = None def create_inference_graph(wanted_words, sample_rate, clip_duration_ms, clip_stride_ms, window_size_ms, window_stride_ms, feature_bin_count, model_architecture, preprocess): """Creates an audio model with the nodes needed for inference. Uses the supplied arguments to create a model, and inserts the input and output nodes that are needed to use the graph for inference. Args: wanted_words: Comma-separated list of the words we're trying to recognize. sample_rate: How many samples per second are in the input audio files. clip_duration_ms: How many samples to analyze for the audio pattern. clip_stride_ms: How often to run recognition. Useful for models with cache. window_size_ms: Time slice duration to estimate frequencies from. window_stride_ms: How far apart time slices should be. feature_bin_count: Number of frequency bands to analyze. model_architecture: Name of the kind of model to generate. preprocess: How the spectrogram is processed to produce features, for example 'mfcc' or 'average'. Raises: Exception: If the preprocessing mode isn't recognized. """ words_list = input_data.prepare_words_list(wanted_words.split(',')) model_settings = models.prepare_model_settings( len(words_list), sample_rate, clip_duration_ms, window_size_ms, window_stride_ms, feature_bin_count, preprocess) runtime_settings = {'clip_stride_ms': clip_stride_ms} wav_data_placeholder = tf.placeholder(tf.string, [], name='wav_data') decoded_sample_data = contrib_audio.decode_wav( wav_data_placeholder, desired_channels=1, desired_samples=model_settings['desired_samples'], name='decoded_sample_data') spectrogram = contrib_audio.audio_spectrogram( decoded_sample_data.audio, window_size=model_settings['window_size_samples'], stride=model_settings['window_stride_samples'], magnitude_squared=True) if preprocess == 'average': fingerprint_input = tf.nn.pool( tf.expand_dims(spectrogram, -1), window_shape=[1, model_settings['average_window_width']], strides=[1, model_settings['average_window_width']], pooling_type='AVG', padding='SAME') elif preprocess == 'mfcc': fingerprint_input = contrib_audio.mfcc( spectrogram, sample_rate, dct_coefficient_count=model_settings['fingerprint_width']) else: raise Exception('Unknown preprocess mode "%s" (should be "mfcc" or' ' "average")' % (preprocess)) fingerprint_size = model_settings['fingerprint_size'] reshaped_input = tf.reshape(fingerprint_input, [-1, fingerprint_size]) logits = models.create_model( reshaped_input, model_settings, model_architecture, is_training=False, runtime_settings=runtime_settings) # Create an output to use for inference. tf.nn.softmax(logits, name='labels_softmax') def main(_): # Create the model and load its weights. sess = tf.InteractiveSession() create_inference_graph( FLAGS.wanted_words, FLAGS.sample_rate, FLAGS.clip_duration_ms, FLAGS.clip_stride_ms, FLAGS.window_size_ms, FLAGS.window_stride_ms, FLAGS.feature_bin_count, FLAGS.model_architecture, FLAGS.preprocess) if FLAGS.quantize: tf.contrib.quantize.create_eval_graph() models.load_variables_from_checkpoint(sess, FLAGS.start_checkpoint) # Turn all the variables into inline constants inside the graph and save it. frozen_graph_def = graph_util.convert_variables_to_constants( sess, sess.graph_def, ['labels_softmax']) tf.train.write_graph( frozen_graph_def, os.path.dirname(FLAGS.output_file), os.path.basename(FLAGS.output_file), as_text=False) tf.logging.info('Saved frozen graph to %s', FLAGS.output_file) if __name__ == '__main__': parser = argparse.ArgumentParser() parser.add_argument( '--sample_rate', type=int, default=16000, help='Expected sample rate of the wavs',) parser.add_argument( '--clip_duration_ms', type=int, default=1000, help='Expected duration in milliseconds of the wavs',) parser.add_argument( '--clip_stride_ms', type=int, default=30, help='How often to run recognition. Useful for models with cache.',) parser.add_argument( '--window_size_ms', type=float, default=30.0, help='How long each spectrogram timeslice is',) parser.add_argument( '--window_stride_ms', type=float, default=10.0, help='How long the stride is between spectrogram timeslices',) parser.add_argument( '--feature_bin_count', type=int, default=40, help='How many bins to use for the MFCC fingerprint', ) parser.add_argument( '--start_checkpoint', type=str, default='', help='If specified, restore this pretrained model before any training.') parser.add_argument( '--model_architecture', type=str, default='conv', help='What model architecture to use') parser.add_argument( '--wanted_words', type=str, default='yes,no,up,down,left,right,on,off,stop,go', help='Words to use (others will be added to an unknown label)',) parser.add_argument( '--output_file', type=str, help='Where to save the frozen graph.') parser.add_argument( '--quantize', type=bool, default=False, help='Whether to train the model for eight-bit deployment') parser.add_argument( '--preprocess', type=str, default='mfcc', help='Spectrogram processing mode. Can be "mfcc" or "average"') FLAGS, unparsed = parser.parse_known_args() tf.app.run(main=main, argv=[sys.argv[0]] + unparsed)