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SASST: Leveraging Syntax-Aware Chunking and LLMs for Simultaneous Speech Translation

11 August 2025
Zeyu Yang
Lai Wei
Roman Koshkin
Xi Chen
Satoshi Nakamura
ArXiv (abs)PDFHTMLGithub (3★)
Main:8 Pages
4 Figures
Bibliography:1 Pages
3 Tables
Appendix:1 Pages
Abstract

This work proposes a grammar-based chunking strategy that segments input streams into semantically complete units by parsing dependency relations (e.g., noun phrase boundaries, verb-object structures) and punctuation features. The method ensures chunk coherence and minimizes semantic fragmentation. Building on this mechanism, we present SASST (Syntax-Aware Simultaneous Speech Translation), an end-to-end framework integrating frozen Whisper encoder and decoder-only LLM. The unified architecture dynamically outputs translation tokens or <WAIT> symbols to jointly optimize translation timing and content, with target-side reordering addressing word-order divergence. Experiments on CoVoST2 multilingual corpus En-{De, Zh, Ja} demonstrate significant translation quality improvements across languages and validate the effectiveness of syntactic structures in LLM-driven SimulST systems.

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