A language dependency parsing mechanism combined with Qwen-VL enables adaptive updates to textual descriptions for improved vision-language tracking performance on benchmarks like TNL2K and LaSOT.
Describe and Attend to Track: Learning Natural Language guided Structural Representation and Visual Attention for Object Tracking
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abstract
The tracking-by-detection framework requires a set of positive and negative training samples to learn robust tracking models for precise localization of target objects. However, existing tracking models mostly treat different samples independently while ignores the relationship information among them. In this paper, we propose a novel structure-aware deep neural network to overcome such limitations. In particular, we construct a graph to represent the pairwise relationships among training samples, and additionally take the natural language as the supervised information to learn both feature representations and classifiers robustly. To refine the states of the target and re-track the target when it is back to view from heavy occlusion and out of view, we elaborately design a novel subnetwork to learn the target-driven visual attentions from the guidance of both visual and natural language cues. Extensive experiments on five tracking benchmark datasets validated the effectiveness of our proposed method.
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cs.CV 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Dynamic Parsing and Updating Natural Language Specification using VLMs for Robust Vision-Language Tracking
A language dependency parsing mechanism combined with Qwen-VL enables adaptive updates to textual descriptions for improved vision-language tracking performance on benchmarks like TNL2K and LaSOT.