211 lines
6.4 KiB
Python
211 lines
6.4 KiB
Python
#!/usr/bin/env python3 -u
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# Copyright (c) Facebook, Inc. and its affiliates.
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#
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# This source code is licensed under the MIT license found in the
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# LICENSE file in the root directory of this source tree.
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import argparse
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import gc
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import os
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import os.path as osp
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import random
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import numpy as np
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import tqdm
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import torch
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from collections import namedtuple
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import faiss
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import fairseq
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import soundfile as sf
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def get_parser():
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parser = argparse.ArgumentParser(
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description="compute kmeans codebook from kaldi-computed feats"
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)
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# fmt: off
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parser.add_argument('data', help='location of tsv files')
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parser.add_argument('--save-dir', help='where to save the output', required=True)
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parser.add_argument('--checkpoint', type=str, help='checkpoint for wav2vec model (if using wav2vec features)', required=True)
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parser.add_argument('--sample-pct', '-r', type=float, help='percentage of timesteps to sample', default=0)
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parser.add_argument('--layer', '-l', type=int, help='which layer to read', default=14)
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parser.add_argument('--faiss-specs', '-f', type=str,
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help='faiss index specs; separated by space '
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'format is: PCAx_NORM_CLUSx_SPHERICAL -> '
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'PCAx if exists first apply PCA '
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'NORM if exists, normalize the vector by L2 norm '
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'CLUSx must exist, cluster to x clusters '
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'SPEHRICAL if exists, apply spherical kmeans',
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default='l2')
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# fmt: on
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return parser
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faiss_spec = namedtuple("faiss_spec", ["pca", "norm", "n_clus", "sphere", "spec_str"])
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def parse_faiss_specs(specs_str):
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specs = []
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for ss in specs_str.split():
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comps = ss.split("_")
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pca = 0
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norm = False
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n_clus = 0
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sphere = False
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for c in comps:
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if c.startswith("PCA"):
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pca = int(c[3:])
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elif c == "NORM":
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norm = True
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elif c.startswith("CLUS"):
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n_clus = int(c[4:])
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elif c == "SPHERICAL":
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sphere = True
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assert n_clus > 0
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specs.append(
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faiss_spec(pca=pca, norm=norm, n_clus=n_clus, sphere=sphere, spec_str=ss)
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)
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return specs
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class Wav2VecFeatureReader(object):
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def __init__(self, cp_file, layer):
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state = fairseq.checkpoint_utils.load_checkpoint_to_cpu(cp_file)
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self.layer = layer
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if "cfg" in state:
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w2v_args = state["cfg"]
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task = fairseq.tasks.setup_task(w2v_args.task)
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model = task.build_model(w2v_args.model)
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else:
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w2v_args = state["args"]
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task = fairseq.tasks.setup_task(w2v_args)
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model = task.build_model(w2v_args)
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model.load_state_dict(state["model"], strict=True)
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model.eval()
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model.cuda()
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self.model = model
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def read_audio(self, fname):
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"""Load an audio file and return PCM along with the sample rate"""
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wav, sr = sf.read(fname)
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assert sr == 16e3
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return wav
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def get_feats(self, loc):
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x = self.read_audio(loc)
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with torch.no_grad():
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source = torch.from_numpy(x).view(1, -1).float().cuda()
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res = self.model(
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source=source, mask=False, features_only=True, layer=self.layer
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)
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return res["layer_results"][self.layer][0].squeeze(1)
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def get_iterator(args):
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with open(args.data, "r") as fp:
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lines = fp.read().split("\n")
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root = lines.pop(0).strip()
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files = [osp.join(root, line.split("\t")[0]) for line in lines if len(line) > 0]
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if getattr(args, "sample_pct", 0) > 0:
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files = random.sample(files, int(args.sample_pct * len(files)))
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num = len(files)
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reader = Wav2VecFeatureReader(args.checkpoint, args.layer)
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def iterate():
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for fname in files:
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feats = reader.get_feats(fname)
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yield feats.cpu().numpy()
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return iterate, num
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def main():
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parser = get_parser()
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args = parser.parse_args()
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faiss_specs = parse_faiss_specs(args.faiss_specs)
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print("Faiss Specs:", faiss_specs)
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feat_path = osp.join(args.save_dir, "features")
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if osp.exists(feat_path + ".npy"):
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feats = np.load(feat_path + ".npy")
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else:
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generator, num = get_iterator(args)
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iterator = generator()
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feats = []
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for f in tqdm.tqdm(iterator, total=num):
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feats.append(f)
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del iterator
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del generator
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feats = np.concatenate(feats)
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print(feats.shape)
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os.makedirs(args.save_dir, exist_ok=True)
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# np.save(feat_path, feats)
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gc.collect()
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torch.cuda.empty_cache()
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reload = False
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for spec in faiss_specs:
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print("Processing spec", spec)
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if reload:
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print("Reloading...")
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del feats
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gc.collect()
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feats = np.load(feat_path + ".npy")
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save_path = osp.join(args.save_dir, spec.spec_str)
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os.makedirs(save_path, exist_ok=True)
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d = feats.shape[-1]
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x = feats
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if spec.pca > 0:
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print("Computing PCA")
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pca = faiss.PCAMatrix(d, spec.pca)
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pca.train(x)
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d = spec.pca
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b = faiss.vector_to_array(pca.b)
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A = faiss.vector_to_array(pca.A).reshape(pca.d_out, pca.d_in)
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np.save(osp.join(save_path, "pca_A"), A.T)
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np.save(osp.join(save_path, "pca_b"), b)
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print("Applying PCA")
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x = pca.apply_py(x)
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if spec.norm:
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reload = spec.pca <= 0
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print("Normalizing")
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faiss.normalize_L2(x)
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print("Computing kmeans")
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kmeans = faiss.Kmeans(
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d,
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spec.n_clus,
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niter=50,
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verbose=True,
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spherical=spec.sphere,
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max_points_per_centroid=feats.shape[0],
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gpu=True,
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nredo=3,
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)
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kmeans.train(x)
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np.save(osp.join(save_path, "centroids"), kmeans.centroids)
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del kmeans
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del x
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gc.collect()
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if __name__ == "__main__":
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main()
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