MMCVMASDASAug 6, 2025

Think Before You Segment: An Object-aware Reasoning Agent for Referring Audio-Visual Segmentation

arXiv:2508.04418v18 citationsh-index: 35Has Code
Originality Highly original
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This addresses the challenge of interpretable and efficient referring audio-visual segmentation for applications in video analysis and human-computer interaction, representing a novel approach rather than an incremental improvement.

The paper tackles the problem of segmenting objects in audible videos based on textual references by proposing TGS-Agent, which decomposes the task into a think-ground-segment process to improve interpretability and reduce reliance on pixel-level supervision, achieving state-of-the-art results on standard and new benchmarks.

Referring Audio-Visual Segmentation (Ref-AVS) aims to segment target objects in audible videos based on given reference expressions. Prior works typically rely on learning latent embeddings via multimodal fusion to prompt a tunable SAM/SAM2 decoder for segmentation, which requires strong pixel-level supervision and lacks interpretability. From a novel perspective of explicit reference understanding, we propose TGS-Agent, which decomposes the task into a Think-Ground-Segment process, mimicking the human reasoning procedure by first identifying the referred object through multimodal analysis, followed by coarse-grained grounding and precise segmentation. To this end, we first propose Ref-Thinker, a multimodal language model capable of reasoning over textual, visual, and auditory cues. We construct an instruction-tuning dataset with explicit object-aware think-answer chains for Ref-Thinker fine-tuning. The object description inferred by Ref-Thinker is used as an explicit prompt for Grounding-DINO and SAM2, which perform grounding and segmentation without relying on pixel-level supervision. Additionally, we introduce R\textsuperscript{2}-AVSBench, a new benchmark with linguistically diverse and reasoning-intensive references for better evaluating model generalization. Our approach achieves state-of-the-art results on both standard Ref-AVSBench and proposed R\textsuperscript{2}-AVSBench. Code will be available at https://github.com/jasongief/TGS-Agent.

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