# Copyright 2019 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. # ============================================================================== """Feature computation for YAMNet.""" import numpy as np import tensorflow as tf def waveform_to_log_mel_spectrogram(waveform, params): """Compute log mel spectrogram of a 1-D waveform.""" with tf.name_scope('log_mel_features'): # waveform has shape [<# samples>] # Convert waveform into spectrogram using a Short-Time Fourier Transform. # Note that tf.signal.stft() uses a periodic Hann window by default. window_length_samples = int( round(params.SAMPLE_RATE * params.STFT_WINDOW_SECONDS)) hop_length_samples = int( round(params.SAMPLE_RATE * params.STFT_HOP_SECONDS)) fft_length = 2 ** int(np.ceil(np.log(window_length_samples) / np.log(2.0))) num_spectrogram_bins = fft_length // 2 + 1 magnitude_spectrogram = tf.abs(tf.signal.stft( signals=waveform, frame_length=window_length_samples, frame_step=hop_length_samples, fft_length=fft_length)) # magnitude_spectrogram has shape [<# STFT frames>, num_spectrogram_bins] # Convert spectrogram into log mel spectrogram. linear_to_mel_weight_matrix = tf.signal.linear_to_mel_weight_matrix( num_mel_bins=params.MEL_BANDS, num_spectrogram_bins=num_spectrogram_bins, sample_rate=params.SAMPLE_RATE, lower_edge_hertz=params.MEL_MIN_HZ, upper_edge_hertz=params.MEL_MAX_HZ) mel_spectrogram = tf.matmul( magnitude_spectrogram, linear_to_mel_weight_matrix) log_mel_spectrogram = tf.math.log(mel_spectrogram + params.LOG_OFFSET) # log_mel_spectrogram has shape [<# STFT frames>, MEL_BANDS] return log_mel_spectrogram def spectrogram_to_patches(spectrogram, params): """Break up a spectrogram into a stack of fixed-size patches.""" with tf.name_scope('feature_patches'): # Frame spectrogram (shape [<# STFT frames>, MEL_BANDS]) into patches # (the input examples). # Only complete frames are emitted, so if there is less than # PATCH_WINDOW_SECONDS of waveform then nothing is emitted # (to avoid this, zero-pad before processing). hop_length_samples = int( round(params.SAMPLE_RATE * params.STFT_HOP_SECONDS)) spectrogram_sr = params.SAMPLE_RATE / hop_length_samples patch_window_length_samples = int( round(spectrogram_sr * params.PATCH_WINDOW_SECONDS)) patch_hop_length_samples = int( round(spectrogram_sr * params.PATCH_HOP_SECONDS)) features = tf.signal.frame( signal=spectrogram, frame_length=patch_window_length_samples, frame_step=patch_hop_length_samples, axis=0) # features has shape [<# patches>, <# STFT frames in an patch>, MEL_BANDS] return features