# 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. # ============================================================================== """Audio summaries and TensorFlow operations to create them. An audio summary stores a rank-2 string tensor of shape `[k, 2]`, where `k` is the number of audio clips recorded in the summary. Each row of the tensor is a pair `[encoded_audio, label]`, where `encoded_audio` is a binary string whose encoding is specified in the summary metadata, and `label` is a UTF-8 encoded Markdown string describing the audio clip. NOTE: This module is in beta, and its API is subject to change, but the data that it stores to disk will be supported forever. """ import functools import warnings import numpy as np from tensorboard.util import encoder as encoder_util from tensorboard.plugins.audio import metadata from tensorboard.plugins.audio import summary_v2 # Export V2 versions. audio = summary_v2.audio _LABELS_WARNING = ( "Labels on audio summaries are deprecated and will be removed. " "See ." ) def op( name, audio, sample_rate, labels=None, max_outputs=3, encoding=None, display_name=None, description=None, collections=None, ): """Create a legacy audio summary op for use in a TensorFlow graph. Arguments: name: A unique name for the generated summary node. audio: A `Tensor` representing audio data with shape `[k, t, c]`, where `k` is the number of audio clips, `t` is the number of frames, and `c` is the number of channels. Elements should be floating-point values in `[-1.0, 1.0]`. Any of the dimensions may be statically unknown (i.e., `None`). sample_rate: An `int` or rank-0 `int32` `Tensor` that represents the sample rate, in Hz. Must be positive. labels: Deprecated. Do not set. max_outputs: Optional `int` or rank-0 integer `Tensor`. At most this many audio clips will be emitted at each step. When more than `max_outputs` many clips are provided, the first `max_outputs` many clips will be used and the rest silently discarded. encoding: A constant `str` (not string tensor) indicating the desired encoding. You can choose any format you like, as long as it's "wav". Please see the "API compatibility note" below. display_name: Optional name for this summary in TensorBoard, as a constant `str`. Defaults to `name`. description: Optional long-form description for this summary, as a constant `str`. Markdown is supported. Defaults to empty. collections: Optional list of graph collections keys. The new summary op is added to these collections. Defaults to `[Graph Keys.SUMMARIES]`. Returns: A TensorFlow summary op. API compatibility note: The default value of the `encoding` argument is _not_ guaranteed to remain unchanged across TensorBoard versions. In the future, we will by default encode as FLAC instead of as WAV. If the specific format is important to you, please provide a file format explicitly. """ if labels is not None: warnings.warn(_LABELS_WARNING) # TODO(nickfelt): remove on-demand imports once dep situation is fixed. import tensorflow.compat.v1 as tf if display_name is None: display_name = name if encoding is None: encoding = "wav" if encoding == "wav": encoding = metadata.Encoding.Value("WAV") encoder = functools.partial( tf.audio.encode_wav, sample_rate=sample_rate ) else: raise ValueError("Unknown encoding: %r" % encoding) with tf.name_scope(name), tf.control_dependencies( [tf.assert_rank(audio, 3)] ): limited_audio = audio[:max_outputs] encoded_audio = tf.map_fn( encoder, limited_audio, dtype=tf.string, name="encode_each_audio" ) if labels is None: limited_labels = tf.tile([""], tf.shape(input=limited_audio)[:1]) else: limited_labels = labels[:max_outputs] tensor = tf.transpose(a=tf.stack([encoded_audio, limited_labels])) summary_metadata = metadata.create_summary_metadata( display_name=display_name, description=description, encoding=encoding, ) return tf.summary.tensor_summary( name="audio_summary", tensor=tensor, collections=collections, summary_metadata=summary_metadata, ) def pb( name, audio, sample_rate, labels=None, max_outputs=3, encoding=None, display_name=None, description=None, ): """Create a legacy audio summary protobuf. This behaves as if you were to create an `op` with the same arguments (wrapped with constant tensors where appropriate) and then execute that summary op in a TensorFlow session. Arguments: name: A unique name for the generated summary node. audio: An `np.array` representing audio data with shape `[k, t, c]`, where `k` is the number of audio clips, `t` is the number of frames, and `c` is the number of channels. Elements should be floating-point values in `[-1.0, 1.0]`. sample_rate: An `int` that represents the sample rate, in Hz. Must be positive. labels: Deprecated. Do not set. max_outputs: Optional `int`. At most this many audio clips will be emitted. When more than `max_outputs` many clips are provided, the first `max_outputs` many clips will be used and the rest silently discarded. encoding: A constant `str` indicating the desired encoding. You can choose any format you like, as long as it's "wav". Please see the "API compatibility note" below. display_name: Optional name for this summary in TensorBoard, as a `str`. Defaults to `name`. description: Optional long-form description for this summary, as a `str`. Markdown is supported. Defaults to empty. Returns: A `tf.Summary` protobuf object. API compatibility note: The default value of the `encoding` argument is _not_ guaranteed to remain unchanged across TensorBoard versions. In the future, we will by default encode as FLAC instead of as WAV. If the specific format is important to you, please provide a file format explicitly. """ if labels is not None: warnings.warn(_LABELS_WARNING) # TODO(nickfelt): remove on-demand imports once dep situation is fixed. import tensorflow.compat.v1 as tf audio = np.array(audio) if audio.ndim != 3: raise ValueError("Shape %r must have rank 3" % (audio.shape,)) if encoding is None: encoding = "wav" if encoding == "wav": encoding = metadata.Encoding.Value("WAV") encoder = functools.partial( encoder_util.encode_wav, samples_per_second=sample_rate ) else: raise ValueError("Unknown encoding: %r" % encoding) limited_audio = audio[:max_outputs] if labels is None: limited_labels = [b""] * len(limited_audio) else: limited_labels = [ tf.compat.as_bytes(label) for label in labels[:max_outputs] ] encoded_audio = [encoder(a) for a in limited_audio] content = np.array([encoded_audio, limited_labels]).transpose() tensor = tf.make_tensor_proto(content, dtype=tf.string) if display_name is None: display_name = name summary_metadata = metadata.create_summary_metadata( display_name=display_name, description=description, encoding=encoding ) tf_summary_metadata = tf.SummaryMetadata.FromString( summary_metadata.SerializeToString() ) summary = tf.Summary() summary.value.add( tag="%s/audio_summary" % name, metadata=tf_summary_metadata, tensor=tensor, ) return summary