CLAIMay 7

VITA-QinYu: Expressive Spoken Language Model for Role-Playing and Singing

arXiv:2605.0676574.6Has Code
AI Analysis

This work addresses the need for expressive speech generation beyond natural conversation, enabling role-playing and singing for spoken language models.

VITA-QinYu is the first expressive end-to-end spoken language model supporting both role-playing and singing, achieving superior expressiveness with 7 percentage points improvement on role-playing benchmarks and 0.13 points higher MOS for singing, while also surpassing prior SLMs in conversational accuracy and fluency.

Human speech conveys expressiveness beyond linguistic content, including personality, mood, or performance elements, such as a comforting tone or humming a song, which we formalize as role-playing and singing. We present VITA-QinYu, the first expressive end-to-end (E2E) spoken language model (SLM) that goes beyond natural conversation to support both role-playing and singing generation. VITA-QinYu adopts a hybrid speech-text paradigm that extends interleaved text-audio modeling with multi-codebook audio tokens, a design enabling richer paralinguistic representation while preserving a clear separation between modalities to avoid interference. We further develop a comprehensive data generation pipeline to synthesize a total of 15.8K hours of natural conversation, role-playing, and singing data for training. VITA-QinYu demonstrates superior expressiveness, outperforming peer SLMs by 7 percentage points on objective role-playing benchmarks, and surpassing peer models by 0.13 points on a 5-point MOS scale for singing. Simultaneously, it achieves state-of-the-art conversational accuracy and fluency, exceeding prior SLMs by 1.38 and 4.98 percentage points on the C3 and URO benchmarks, respectively. We open-source our code and models and provide an easy-to-use demo with full-stack support for streaming and full-duplex interaction.

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