SDCLOct 15, 2025

UniMoE-Audio: Unified Speech and Music Generation with Dynamic-Capacity MoE

arXiv:2510.13344v13 citationsh-index: 12
Originality Incremental advance
AI Analysis

This addresses the problem of isolated development in audio synthesis for researchers and practitioners, offering a unified approach that mitigates performance degradation, though it is incremental in building on existing MoE and training strategies.

The paper tackled the challenge of unified audio generation for speech and music by proposing UniMoE-Audio, a model with a Dynamic-Capacity Mixture-of-Experts framework and a three-stage training curriculum, achieving state-of-the-art performance on major benchmarks and demonstrating superior synergistic learning.

Recent advances in unified multimodal models indicate a clear trend towards comprehensive content generation. However, the auditory domain remains a significant challenge, with music and speech often developed in isolation, hindering progress towards universal audio synthesis. This separation stems from inherent task conflicts and severe data imbalances, which impede the development of a truly unified audio generation model. To address this challenge, we propose UniMoE-Audio, a unified speech and music generation model within a novel Dynamic-Capacity Mixture-of-Experts (MoE) framework. Architecturally, UniMoE-Audio introduces a Top-P routing strategy for dynamic expert number allocation, and a hybrid expert design comprising routed experts for domain-specific knowledge, shared experts for domain-agnostic features, and null experts for adaptive computation skipping. To tackle data imbalance, we introduce a three-stage training curriculum: 1) Independent Specialist Training leverages original datasets to instill domain-specific knowledge into each "proto-expert" without interference; 2) MoE Integration and Warmup incorporates these specialists into the UniMoE-Audio architecture, warming up the gate module and shared expert using a subset of balanced dataset; and 3) Synergistic Joint Training trains the entire model end-to-end on the fully balanced dataset, fostering enhanced cross-domain synergy. Extensive experiments show that UniMoE-Audio not only achieves state-of-the-art performance on major speech and music generation benchmarks, but also demonstrates superior synergistic learning, mitigating the performance degradation typically seen in naive joint training. Our findings highlight the substantial potential of specialized MoE architecture and curated training strategies in advancing the field of universal audio generation. Homepage: https://mukioxun.github.io/Uni-MoE-site/home.html

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