# Copyright (c) Facebook, Inc. and its affiliates. # All rights reserved. # # This source code is licensed under the license found in the # LICENSE file in the root directory of this source tree. from collections import OrderedDict import hashlib import math import json from pathlib import Path import julius import torch as th from torch import distributed import torchaudio as ta from torch.nn import functional as F from .audio import convert_audio_channels from .compressed import get_musdb_tracks MIXTURE = "mixture" EXT = ".wav" def _track_metadata(track, sources): track_length = None track_samplerate = None for source in sources + [MIXTURE]: file = track / f"{source}{EXT}" info = ta.info(str(file)) length = info.num_frames if track_length is None: track_length = length track_samplerate = info.sample_rate elif track_length != length: raise ValueError( f"Invalid length for file {file}: " f"expecting {track_length} but got {length}.") elif info.sample_rate != track_samplerate: raise ValueError( f"Invalid sample rate for file {file}: " f"expecting {track_samplerate} but got {info.sample_rate}.") if source == MIXTURE: wav, _ = ta.load(str(file)) wav = wav.mean(0) mean = wav.mean().item() std = wav.std().item() return {"length": length, "mean": mean, "std": std, "samplerate": track_samplerate} def _build_metadata(path, sources): meta = {} path = Path(path) for file in path.iterdir(): meta[file.name] = _track_metadata(file, sources) return meta class Wavset: def __init__( self, root, metadata, sources, length=None, stride=None, normalize=True, samplerate=44100, channels=2): """ Waveset (or mp3 set for that matter). Can be used to train with arbitrary sources. Each track should be one folder inside of `path`. The folder should contain files named `{source}.{ext}`. Files will be grouped according to `sources` (each source is a list of filenames). Sample rate and channels will be converted on the fly. `length` is the sample size to extract (in samples, not duration). `stride` is how many samples to move by between each example. """ self.root = Path(root) self.metadata = OrderedDict(metadata) self.length = length self.stride = stride or length self.normalize = normalize self.sources = sources self.channels = channels self.samplerate = samplerate self.num_examples = [] for name, meta in self.metadata.items(): track_length = int(self.samplerate * meta['length'] / meta['samplerate']) if length is None or track_length < length: examples = 1 else: examples = int(math.ceil((track_length - self.length) / self.stride) + 1) self.num_examples.append(examples) def __len__(self): return sum(self.num_examples) def get_file(self, name, source): return self.root / name / f"{source}{EXT}" def __getitem__(self, index): for name, examples in zip(self.metadata, self.num_examples): if index >= examples: index -= examples continue meta = self.metadata[name] num_frames = -1 offset = 0 if self.length is not None: offset = int(math.ceil( meta['samplerate'] * self.stride * index / self.samplerate)) num_frames = int(math.ceil( meta['samplerate'] * self.length / self.samplerate)) wavs = [] for source in self.sources: file = self.get_file(name, source) wav, _ = ta.load(str(file), frame_offset=offset, num_frames=num_frames) wav = convert_audio_channels(wav, self.channels) wavs.append(wav) example = th.stack(wavs) example = julius.resample_frac(example, meta['samplerate'], self.samplerate) if self.normalize: example = (example - meta['mean']) / meta['std'] if self.length: example = example[..., :self.length] example = F.pad(example, (0, self.length - example.shape[-1])) return example def get_wav_datasets(args, samples, sources): sig = hashlib.sha1(str(args.wav).encode()).hexdigest()[:8] metadata_file = args.metadata / (sig + ".json") train_path = args.wav / "train" valid_path = args.wav / "valid" if not metadata_file.is_file() and args.rank == 0: train = _build_metadata(train_path, sources) valid = _build_metadata(valid_path, sources) json.dump([train, valid], open(metadata_file, "w")) if args.world_size > 1: distributed.barrier() train, valid = json.load(open(metadata_file)) train_set = Wavset(train_path, train, sources, length=samples, stride=args.data_stride, samplerate=args.samplerate, channels=args.audio_channels, normalize=args.norm_wav) valid_set = Wavset(valid_path, valid, [MIXTURE] + sources, samplerate=args.samplerate, channels=args.audio_channels, normalize=args.norm_wav) return train_set, valid_set def get_musdb_wav_datasets(args, samples, sources): metadata_file = args.metadata / "musdb_wav.json" root = args.musdb / "train" if not metadata_file.is_file() and args.rank == 0: metadata = _build_metadata(root, sources) json.dump(metadata, open(metadata_file, "w")) if args.world_size > 1: distributed.barrier() metadata = json.load(open(metadata_file)) train_tracks = get_musdb_tracks(args.musdb, is_wav=True, subsets=["train"], split="train") metadata_train = {name: meta for name, meta in metadata.items() if name in train_tracks} metadata_valid = {name: meta for name, meta in metadata.items() if name not in train_tracks} train_set = Wavset(root, metadata_train, sources, length=samples, stride=args.data_stride, samplerate=args.samplerate, channels=args.audio_channels, normalize=args.norm_wav) valid_set = Wavset(root, metadata_valid, [MIXTURE] + sources, samplerate=args.samplerate, channels=args.audio_channels, normalize=args.norm_wav) return train_set, valid_set