Recent multi-camera multi-object tracking (MC-MOT) algorithms are primarily trained using per-detection identity annotations, which are complicated to obtain. In contrast, labeling a language description per-object is a more natural and human-friendly way. In this paper, we explore MCMOT in a language-supervised manner (LS-MCMOT) and propose a novel approach LaVST, which performs language-to-vision weakly-supervised learning based on reliable pseudo-labels generated via tracklet-level cross-modality matching. In addition, we design an ID-aware projection self-correction mechanism to correct inaccurate image-to-ground projection in a self-supervised manner. The models trained with our approach exhibit promising performance in LS-MCMOT. Surprisingly, they perform favorably against state-of-the-art identity-supervised methods, especially in cross-dataset evaluation (with an average gain by 20.0% in IDF1), underscoring the potential of language annotations in MCMOT. Codes and language annotations will be available here.
Mao et al. (Thu,) studied this question.
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