Speech Vecalign: an Embedding-based Method for Aligning Parallel Speech Documents
Abstract
We present Speech Vecalign, a parallel speech document alignment method that monotonically aligns speech segment embeddings and does not depend on text transcriptions. Compared to the baseline method Global Mining, a variant of speech mining, Speech Vecalign produces longer speech-to-speech alignments. It also demonstrates greater robustness than Local Mining, another speech mining variant, as it produces less noise. We applied Speech Vecalign to 3,000 hours of unlabeled parallel English-German (En-De) speech documents from VoxPopuli, yielding about 1,000 hours of high-quality alignments. We then trained En-De speech-to-speech translation models on the aligned data. Speech Vecalign improves the En-to-De and De-to-En performance over Global Mining by 0.37 and 0.18 ASR-BLEU, respectively. Moreover, our models match or outperform SpeechMatrix model performance, despite using 8 times fewer raw speech documents.
Keywords
Cite
@article{arxiv.2509.18360,
title = {Speech Vecalign: an Embedding-based Method for Aligning Parallel Speech Documents},
author = {Chutong Meng and Philipp Koehn},
journal= {arXiv preprint arXiv:2509.18360},
year = {2025}
}
Comments
Accepted by EMNLP 2025 (main)