QTrack: Query-Driven Reasoning for Multi-modal MOT
arXiv cs.CV / 3/17/2026
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Key Points
- QTrack introduces a query-driven tracking paradigm that localizes and tracks only the target objects specified by natural language queries while maintaining temporal coherence and identity consistency.
- The authors build RMOT26, a large-scale grounded-query MOT benchmark with sequence-level splits to prevent identity leakage and enable robust generalization evaluation.
- They propose QTrack, an end-to-end vision-language model that combines multimodal reasoning with tracking-oriented localization.
- A Temporal Perception-Aware Policy Optimization method with structured rewards is introduced to encourage motion-aware reasoning.
- Extensive experiments demonstrate the effectiveness of language-guided tracking, and the authors release code and data at the provided GitHub URL.
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