Source code for paddlespeech.t2s.datasets.batch

# Copyright (c) 2020 PaddlePaddle Authors. All Rights Reserved.
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# Licensed under the Apache License, Version 2.0 (the "License");
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#     http://www.apache.org/licenses/LICENSE-2.0
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"""
Utility functions to create batch for arrays which satisfy some conditions.
Batch functions for text sequences, audio and spectrograms are provided.
"""
import numpy as np

__all__ = [
    "batch_text_id",
    "batch_wav",
    "batch_spec",
    "TextIDBatcher",
    "WavBatcher",
    "SpecBatcher",
]


[docs]class TextIDBatcher(object): """A wrapper class for `batch_text_id`.""" def __init__(self, pad_id=0, dtype=np.int64): self.pad_id = pad_id self.dtype = dtype def __call__(self, minibatch): out = batch_text_id(minibatch, pad_id=self.pad_id, dtype=self.dtype) return out
[docs]def batch_text_id(minibatch, pad_id=0, dtype=np.int64): """Pad sequences to text_ids to the largest length and batch them. Args: minibatch (List[np.ndarray]): list of rank-1 arrays, shape(T,), dtype np.int64, text_ids. pad_id (int, optional): the id which correspond to the special pad token. Defaults to 0. dtype (np.dtype, optional): the data dtype of the output. Defaults to np.int64. Returns: np.ndarray: rank-2 array of text_ids, shape(B, T), B stands for batch_size, T stands for length. The output batch. """ peek_example = minibatch[0] assert len(peek_example.shape) == 1, "text example is an 1D tensor" # assume (channel, n_samples) or (n_samples, ) lengths = [example.shape[0] for example in minibatch] max_len = np.max(lengths) batch = [] for example in minibatch: pad_len = max_len - example.shape[0] batch.append( np.pad( example, [(0, pad_len)], mode='constant', constant_values=pad_id)) return np.array(batch, dtype=dtype), np.array(lengths, dtype=np.int64)
[docs]class WavBatcher(object): """A wrapper class for `batch_wav`.""" def __init__(self, pad_value=0., dtype=np.float32): self.pad_value = pad_value self.dtype = dtype def __call__(self, minibatch): out = batch_wav(minibatch, pad_value=self.pad_value, dtype=self.dtype) return out
[docs]def batch_wav(minibatch, pad_value=0., dtype=np.float32): """pad audios to the largest length and batch them. Args: minibatch (List[np.ndarray]): list of rank-1 float arrays(mono-channel audio, shape(T,)), dtype float. pad_value (float, optional): the pad value. Defaults to 0.. dtype (np.dtype, optional): the data type of the output. Defaults to np.float32. Returns: np.ndarray: shape(B, T), the output batch. """ peek_example = minibatch[0] assert len(peek_example.shape) == 1, "we only handles mono-channel wav" # assume (channel, n_samples) or (n_samples, ) lengths = [example.shape[-1] for example in minibatch] max_len = np.max(lengths) batch = [] for example in minibatch: pad_len = max_len - example.shape[-1] batch.append( np.pad( example, [(0, pad_len)], mode='constant', constant_values=pad_value)) return np.array(batch, dtype=dtype), np.array(lengths, dtype=np.int64)
[docs]class SpecBatcher(object): """A wrapper class for `batch_spec`""" def __init__(self, pad_value=0., time_major=False, dtype=np.float32): self.pad_value = pad_value self.dtype = dtype self.time_major = time_major def __call__(self, minibatch): out = batch_spec( minibatch, pad_value=self.pad_value, time_major=self.time_major, dtype=self.dtype) return out
[docs]def batch_spec(minibatch, pad_value=0., time_major=False, dtype=np.float32): """Pad spectra to the largest length and batch them. Args: minibatch (List[np.ndarray]): list of rank-2 arrays of shape(F, T) for mono-channel spectrograms, or list of rank-3 arrays of shape(C, F, T) for multi-channel spectrograms(F stands for frequency bands.), dtype float. pad_value (float, optional): the pad value. Defaults to 0.. dtype (np.dtype, optional): data type of the output. Defaults to np.float32. Returns: np.ndarray: a rank-3 array of shape(B, F, T) or (B, T, F). """ # assume (F, T) or (T, F) peek_example = minibatch[0] assert len( peek_example.shape) == 2, "we only handles mono channel spectrogram" # assume (F, n_frame) or (n_frame, F) time_idx = 0 if time_major else -1 lengths = [example.shape[time_idx] for example in minibatch] max_len = np.max(lengths) batch = [] for example in minibatch: pad_len = max_len - example.shape[time_idx] if time_major: batch.append( np.pad( example, [(0, pad_len), (0, 0)], mode='constant', constant_values=pad_value)) else: batch.append( np.pad( example, [(0, 0), (0, pad_len)], mode='constant', constant_values=pad_value)) return np.array(batch, dtype=dtype), np.array(lengths, dtype=np.int64)
def batch_sequences(sequences, axis=0, pad_value=0): seq = sequences[0] ndim = seq.ndim if axis < 0: axis += ndim dtype = seq.dtype pad_value = dtype.type(pad_value) seq_lengths = [seq.shape[axis] for seq in sequences] max_length = np.max(seq_lengths) padded_sequences = [] for seq, length in zip(sequences, seq_lengths): padding = [(0, 0)] * axis + [(0, max_length - length)] + [(0, 0)] * ( ndim - axis - 1) padded_seq = np.pad( seq, padding, mode='constant', constant_values=pad_value) padded_sequences.append(padded_seq) batch = np.stack(padded_sequences) return batch