Efficient and Adaptive Simultaneous Speech Translation with Fully Unidirectional Architecture

Authors

  • Biao Fu Xiamen University Key Laboratory of Digital Protection and Intelligent Processing of Intangible Cultural Heritage of Fujian and Taiwan (Xiamen University), Ministry of Culture and Tourism
  • Donglei Yu University of Chinese Academy of Sciences Institute of automation, Chinese academy of science, Chinese Academy of Sciences
  • Minpeng Liao Alibaba Group Tongyi Lab
  • Chengxi Li Alibaba Group Tongyi Lab
  • Xinjie Chen Zhejiang University Alibaba Group Tongyi Lab
  • Yidong Chen Xiamen University Key Laboratory of Digital Protection and Intelligent Processing of Intangible Cultural Heritage of Fujian and Taiwan (Xiamen University), Ministry of Culture and Tourism
  • Kai Fan Alibaba Group Tongyi Lab
  • Xiaodong Shi Xiamen University Key Laboratory of Digital Protection and Intelligent Processing of Intangible Cultural Heritage of Fujian and Taiwan (Xiamen University), Ministry of Culture and Tourism

DOI:

https://doi.org/10.1609/aaai.v40i36.40330

Abstract

Simultaneous speech translation (SimulST) produces translations incrementally while processing partial speech input. Although large language models (LLMs) have shown strong capabilities in offline translation tasks, applying them to SimulST poses notable challenges. Existing LLM-based SimulST approaches either incur significant computational overhead due to repeated encoding of bidirectional speech encoder, or they depend on a fixed read/write policy, limiting the efficiency and performance. In this work, we introduce Efficient and Adaptive Simultaneous Speech Translation (EASiST) with fully unidirectional architecture, including both speech encoder and LLM. EASiST includes a multi-latency data curation strategy to generate semantically aligned SimulST training samples and redefines SimulST as an interleaved generation task with explicit read/write tokens. To facilitate adaptive inference, we incorporate a lightweight policy head that dynamically predicts read/write actions. Additionally, we employ a multi-stage training strategy to align speech-text modalities and optimize both translation and policy behavior. Experiments on both in-domain (MuST-C) and out-of-domain (Europarl-ST) En-De and En-Es datasets demonstrate that EASiST offers superior latency-quality trade-offs compared to several strong baselines.

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Published

2026-03-14

How to Cite

Fu, B., Yu, D., Liao, M., Li, C., Chen, X., Chen, Y., … Shi, X. (2026). Efficient and Adaptive Simultaneous Speech Translation with Fully Unidirectional Architecture. Proceedings of the AAAI Conference on Artificial Intelligence, 40(36), 30735–30743. https://doi.org/10.1609/aaai.v40i36.40330

Issue

Section

AAAI Technical Track on Natural Language Processing I