MSLM-S2ST: A Multitask Speech Language Model for Textless Speech-to-Speech Translation with Speaker Style Preservation

Peng, Yifan, Kulikov, Ilia, Yang, Yilin, Popuri, Sravya, Lu, Hui, Wang, Changhan, Gong, Hongyu

arXiv.org Artificial Intelligence 

There have been emerging research interest and advances in speech-to-speech translation (S2ST), translating utterances from one language to another. This work proposes Multitask Speech Language Model (MSLM), which is a decoder-only speech language model trained in a multitask setting. Without reliance on text training data, our model is able to support multilingual S2ST with speaker style preserved.