Phoenix-VAD: Streaming Semantic Endpoint Detection for Full-Duplex Speech Interaction (2509.20410v1)
Abstract: Spoken dialogue models have significantly advanced intelligent human\textendash computer interaction, yet they lack a plug\textendash and\textendash play full\textendash duplex prediction module for semantic endpoint detection, hindering seamless audio interactions. In this paper, we introduce Phoenix\textendashVAD, an LLM\textendash based model that enables streaming semantic endpoint detection. Specifically, Phoenix\textendash VAD leverages the semantic comprehension capability of the LLM and a sliding window training strategy to achieve reliable semantic endpoint detection while supporting streaming inference. Experiments on both semantically complete and incomplete speech scenarios indicate that Phoenix\textendash VAD achieves excellent and competitive performance. Furthermore, this design enables the full\textendash duplex prediction module to be optimized independently of the dialogue model, providing more reliable and flexible support for next\textendash generation human\textendash computer interaction.
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