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AgentRVOS: Reasoning over Object Tracks for Zero-Shot Referring Video Object Segmentation

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Referring Video Object Segmentation (RVOS) aims to segment a target object throughout a video given a natural language query. Training-free methods for this task follow a common pipeline: a MLLM selects keyframes, grounds the referred object within those frames, and a video segmentation model propagates the results. While intuitive, this design asks the MLLM to make temporal decisions before any object-level evidence is available, limiting both reasoning quality and spatio-temporal coverage. To overcome this, we propose AgentRVOS, a training-free agentic pipeline built on the complementary strengths of SAM3 and a MLLM. Given a concept derived from the query, SAM3 provides reliable perception over the full spatio-temporal extent through generated mask tracks. The MLLM then identifies the target through query-grounded reasoning over this object-level evidence, iteratively pruning guided by SAM3's temporal existence information. Extensive experiments show that AgentRVOS achieves state-of-the-art performance among training-free methods across multiple benchmarks, with consistent results across diverse MLLM backbones. Our project page is available at: https://cvlab-kaist.github.io/AgentRVOS/.

Woojeong Jin, Jaeho Lee, Heeseong Shin, Seungho Jang, Junhwan Heo, Seungryong Kim• 2026

Related benchmarks

TaskDatasetResultRank
Referring Video SegmentationMeViS
J&F Score73.1
81
Reasoning Video Object SegmentationReasonVOS
J&F Score75.5
23
Referring and Reasoning Video Object SegmentationReVOS
Overall J&F Score66.3
16
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