Audio-Visual Intelligence in Large Foundation Models

You Qin, Kai Liu, Shengqiong Wu, Kai Wang, Shijian Deng, Yapeng Tian, Junbin Xiao, Yazhou Xing, Yinghao Ma, Bobo Li, Roger Zimmermann, Lei Cui, Furu Wei, Jiebo Luo, Hao Fei

arXiv:2605.04045 · 2026-05-08 공개 · arXiv · PDF

Abstract

Audio-Visual Intelligence (AVI) has emerged as a central frontier in artificial intelligence, bridging auditory and visual modalities to enable machines that can perceive, generate, and interact in the multimodal real world. In the era of large foundation models, joint modeling of audio and vision has become increasingly crucial, i.e., not only for understanding but also for controllable generation and reasoning across dynamic, temporally grounded signals. Recent advances, such as Meta MovieGen and Google Veo-3, highlight the growing industrial and academic focus on unified audio-vision architectures that learn from massive multimodal data. However, despite rapid progress, the literature remains fragmented, spanning diverse tasks, inconsistent taxonomies, and heterogeneous evaluation practices that impede systematic comparison and knowledge integration. This survey provides the first comprehensive review of AVI through the lens of large foundation models. We establish a unified taxonomy covering the broad landscape of AVI tasks, ranging from understanding (e.g., speech recognition, sound localization) to generation (e.g., audio-driven video synthesis, video-to-audio) and interaction (e.g., dialogue, embodied, or agentic interfaces). We synthesize methodological foundations, including modality tokenization, cross-modal fusion, autoregressive and diffusion-based generation, large-scale pretraining, instruction alignment, and preference optimization. Furthermore, we curate representative datasets, benchmarks, and evaluation metrics, offering a structured comparison across task families and identifying open challenges in synchronization, spatial reasoning, controllability, and safety. By consolidating this rapidly expanding field into a coherent framework, this survey aims to serve as a foundational reference for future research on large-scale AVI.

한국어 요약

📋 한 줄 요약

**[멀티모달/서베이]** 대형 파운데이션 모델 시대의 오디오-비주얼 인공지능(AVI)을 통합 분류체계로 정리한 첫 종합 서베이.

🎯 핵심 기여도

💡 핵심 아이디어

오디오와 비전을 함께 모델링하는 연구는 이해뿐 아니라 제어 가능한 생성과 추론까지 확장되었지만, 작업·분류·평가 관행이 파편화되어 비교가 어렵다. 이 서베이는 파운데이션 모델 관점에서 일관된 프레임을 제시한다.

🔬 기술적 접근법

📊 주요 결과

💭 의의 및 한계

**의의**: 빠르게 확장되는 AVI 분야의 표준 참고문서로, 후속 연구의 비교·재현·확장을 가능하게 함. **한계**: 서베이 특성상 새로운 모델 제안이나 실험 평가는 포함되지 않으며, 발전 속도가 빨라 일부 최신 성과는 추가 업데이트 필요.

🚀 실용적 활용