CVDec 28, 2025

JavisGPT: A Unified Multi-modal LLM for Sounding-Video Comprehension and Generation

arXiv:2512.22905v213 citationsh-index: 27
Originality Incremental advance
AI Analysis

This addresses the need for integrated audio-video AI systems, offering a novel approach but with incremental advancements in multimodal fusion.

The paper tackles the problem of joint audio-video comprehension and generation by introducing JavisGPT, a unified multimodal large language model that outperforms existing models on benchmarks, especially in complex and temporally synchronized settings.

This paper presents JavisGPT, the first unified multimodal large language model (MLLM) for joint audio-video (JAV) comprehension and generation. JavisGPT has a concise encoder-LLM-decoder architecture, which has a SyncFusion module for spatio-temporal audio-video fusion and synchrony-aware learnable queries to bridge a pretrained JAV-DiT generator. This design enables temporally coherent video-audio understanding and generation from multimodal instructions. We design an effective three-stage training pipeline consisting of multimodal pretraining, audio-video fine-tuning, and large-scale instruction-tuning, to progressively build multimodal comprehension and generation from existing vision-language models. For instruction tuning, we construct JavisInst-Omni, a high-quality instruction dataset with over 200K GPT-4o-curated audio-video-text dialogues that cover diverse and multi-level comprehension and generation scenarios. On JAV comprehension and generation benchmarks, our experiments show that JavisGPT outperforms existing MLLMs, particularly in complex and temporally synchronized settings.

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