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Towards Comprehensive Semantic Speech Embeddings for Chinese Dialects

A speech encoder trained on ASR-only data achieves cross-dialect semantic alignment for Chinese dialects, enabling improved speech-to-speech retrieval and laying foundation for dialect-to-Mandarin speech-LLMs.

Year
2026
Venue
arXiv 2026
Authors
4
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arxiv.org/abs/2601.07274ARXIV-DEFAULT
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Abstract

Despite having hundreds of millions of speakers, Chinese dialects lag behind Mandarin in speech and language technologies. Most varieties are primarily spoken, making dialect-to-Mandarin speech-LLMs (large language models) more practical than dialect LLMs. Building dialect-to-Mandarin speech-LLMs requires speech representations with cross-dialect semantic alignment between Chinese dialects and Mandarin. In this paper, we achieve such a cross-dialect semantic alignment by training a speech encoder with ASR (automatic speech recognition)-only data, as demonstrated by speech-to-speech retrieval on a new benchmark of spoken Chinese varieties that we contribute. Our speech encoder further demonstrates state-of-the-art ASR performance on Chinese dialects. Together, our Chinese dialect benchmark, semantically aligned speech representations, and speech-to-speech retrieval evaluation lay the groundwork for future Chinese dialect speech-LLMs. We release the benchmark at https://github.com/kalvinchang/yubao.

Authors

4