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Autores principales: Zhang, Linhao, Song, Yuhan, Liu, Aiwei, Wu, Chuhan, Zhang, Sijun, Jia, Wei, Liu, Yuan, Wang, Houfeng, Zhou, Xiao
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2604.12506
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author Zhang, Linhao
Song, Yuhan
Liu, Aiwei
Wu, Chuhan
Zhang, Sijun
Jia, Wei
Liu, Yuan
Wang, Houfeng
Zhou, Xiao
author_facet Zhang, Linhao
Song, Yuhan
Liu, Aiwei
Wu, Chuhan
Zhang, Sijun
Jia, Wei
Liu, Yuan
Wang, Houfeng
Zhou, Xiao
contents Recent Audio Large Language Models (AudioLLMs) exhibit a striking performance inversion: while excelling at complex reasoning tasks, they consistently underperform on fine-grained acoustic perception. We attribute this gap to a fundamental limitation of ASR-centric training, which provides precise linguistic targets but implicitly teaches models to suppress paralinguistic cues and acoustic events as noise. To address this, we propose Unified Audio Schema (UAS), a holistic and structured supervision framework that organizes audio information into three explicit components -- Transcription, Paralinguistics, and Non-linguistic Events -- within a unified JSON format. This design achieves comprehensive acoustic coverage without sacrificing the tight audio-text alignment that enables reasoning. We validate the effectiveness of this supervision strategy by applying it to both discrete and continuous AudioLLM architectures. Extensive experiments on MMSU, MMAR, and MMAU demonstrate that UAS-Audio yields consistent improvements, boosting fine-grained perception by 10.9% on MMSU over the same-size state-of-the-art models while preserving robust reasoning capabilities. Our code and model are publicly available at https://github.com/Tencent/Unified_Audio_Schema.
format Preprint
id arxiv_https___arxiv_org_abs_2604_12506
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Beyond Transcription: Unified Audio Schema for Perception-Aware AudioLLMs
Zhang, Linhao
Song, Yuhan
Liu, Aiwei
Wu, Chuhan
Zhang, Sijun
Jia, Wei
Liu, Yuan
Wang, Houfeng
Zhou, Xiao
Computation and Language
Sound
Recent Audio Large Language Models (AudioLLMs) exhibit a striking performance inversion: while excelling at complex reasoning tasks, they consistently underperform on fine-grained acoustic perception. We attribute this gap to a fundamental limitation of ASR-centric training, which provides precise linguistic targets but implicitly teaches models to suppress paralinguistic cues and acoustic events as noise. To address this, we propose Unified Audio Schema (UAS), a holistic and structured supervision framework that organizes audio information into three explicit components -- Transcription, Paralinguistics, and Non-linguistic Events -- within a unified JSON format. This design achieves comprehensive acoustic coverage without sacrificing the tight audio-text alignment that enables reasoning. We validate the effectiveness of this supervision strategy by applying it to both discrete and continuous AudioLLM architectures. Extensive experiments on MMSU, MMAR, and MMAU demonstrate that UAS-Audio yields consistent improvements, boosting fine-grained perception by 10.9% on MMSU over the same-size state-of-the-art models while preserving robust reasoning capabilities. Our code and model are publicly available at https://github.com/Tencent/Unified_Audio_Schema.
title Beyond Transcription: Unified Audio Schema for Perception-Aware AudioLLMs
topic Computation and Language
Sound
url https://arxiv.org/abs/2604.12506