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Pre-computed speaker embeddings
Pre-computed 512-dim L2-normalized speaker embeddings extracted with
pyannote/embedding over
VoxCeleb 2 dev (5800 speakers via gaunernst/voxceleb2-dev-wds). One utterance per speaker, minimum 3 s duration.
Contents
voxceleb.pyannote-embedding.npz— numpy.npzarchive with:embeddings:(5800, 512)float32speaker_ids:(5800,)string IDs from the source corpusmetadata_json: per-speaker metadata (accent / age / gender / source URL) — populated for 0 / 5800 speakersn_speakers,sourcefor provenance
Loading
import numpy as np
data = np.load("voxceleb.pyannote-embedding.npz", allow_pickle=True)
embeddings = data["embeddings"] # (N, 512)
speaker_ids = list(data["speaker_ids"]) # length N
Regenerating
This file was produced by voxpath
via:
voxpath corpus build commonvoice --max-speakers 5800 \
--output voxceleb.pyannote-embedding.npz
voxpath corpus build streams the source audio, embeds each speaker's
first valid (≥ 3 s) utterance with pyannote/embedding, L2-normalises,
and writes the .npz.
Why model-specific
Speaker embeddings are not portable across embedders. A wespeaker
embedding and a pyannote/embedding embedding for the same audio lie
in different spaces and can't be compared or quantized together. This
repo is named after the embedding model so users can find the right
artifact for their pipeline at a glance.
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