We introduce DeSTA2.5-Audio, a general-purpose Large Audio Language Model (LALM) designed for robust auditory perception and instruction-following, without requiring task-specific audio instruction-tuning. Recent LALMs typically augment Large Language Models (LLMs) with auditory capabilities by training on large-scale, manually curated or LLM-synthesized audio-instruction datasets. However, these approaches have often suffered from the catastrophic forgetting of the LLM's original language abilities. To address this, we revisit the data construction pipeline and propose DeSTA, a self-generated cross-modal alignment strategy in which the backbone LLM generates its own training targets. This approach preserves the LLM's native language proficiency while establishing effective audio-text alignment, thereby enabling zero-shot generalization without task-specific tuning. Using DeSTA, we construct DeSTA-AQA5M, a large-scale, task-agnostic dataset containing 5 million training samples derived from 7,000 hours of audio spanning 50 diverse datasets, including speech, environmental sounds, and music. DeSTA2.5-Audio achieves state-of-the-art or competitive performance across a wide range of audio-language benchmarks, including Dynamic-SUPERB, MMAU, SAKURA, Speech-IFEval, and VoiceBench. Comprehensive comparative studies demonstrate that our self-generated strategy outperforms widely adopted data construction and training strategies in both auditory perception and instruction-following capabilities. Our findings underscore the importance of carefully designed data construction in LALM development and offer practical insights for building robust, general-purpose LALMs.
DeSTA2.5-Audio: Toward General-Purpose Large Audio Language Model with Self-Generated Cross-Modal Alignment
DeSTA2.5-Audio, a self-generated cross-modal alignment strategy, enhances a Large Audio Language Model's auditory perception and instruction-following without task-specific tuning, achieving state-of-the-art performance across various benchmarks.
- Year
- 2025
- Venue
- arXiv 2025
- Authors
- 28
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2507.02768ARXIV-DEFAULT
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28Sung-Feng HuangSzu-Wei FuBoris GinsburgYu-Chiang Frank WangKai-Wei ChangHung-Yi LeeCheng-Han ChiangEn-Pei HuKe-Han LuZhehuai ChenChao-Han Huck YangChih-Kai YangChee-En YuChun-Wei ChenWei-Chih ChenChien-yu HuangYi-Cheng LinYu-Xiang LinChi-An FuChun-Yi KuanWenze RenXuanjun ChenWei-Ping HuangTzu-Quan LinYuan-Kuei WuKuan-Po HuangHsiao-Ying HuangHuang-Cheng Chou