3260 papers • 126 benchmarks • 313 datasets
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These leaderboards are used to track progress in multiple-people-tracking
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Use these libraries to find multiple-people-tracking models and implementations
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A new release of the MOTChallenge benchmark, which focuses on multiple people tracking, and offers a significant increase in the number of labeled boxes, but also provides multiple object classes beside pedestrians and the level of visibility for every single object of interest.
This paper proposes to handle unreliable detection by collecting candidates from outputs of both detection and tracking, and adopts a deeply learned appearance representation, which is trained on large-scale person re-identification datasets, to improve the identification ability of the tracker.
This paper presents the 1st place solution to the Group Dance Multiple People Tracking Challenge, surpassing the second-place solution by +6.8% HOTA and using the YOLOX detection proposals for the anchor initialization of detect queries.
This work proposed a novel multi-camera multiple people tracking method that uses anchor-guided clustering for cross-camera re-identification and spatio-temporal consistency for geometry-based cross- camera ID reassigning that has demonstrated robustness and effectiveness in handling both synthetic and real-world data.
The MOT20benchmark, consisting of 8 new sequences depicting very crowded challenging scenes, is presented, and gives to chance to evaluate state-of-the-art methods for multiple object tracking when handling extremely crowded scenarios.
UniTrack is presented, a solution to address five different tasks within the same framework that consists of a single and task-agnostic appearance model, which can be learned in a supervised or self-supervised fashion, and multiple ``heads'' that address individual tasks and do not require training.
The BoostTrack is presented, a simple yet effective tracing-by-detection MOT method that utilizes several lightweight plug and play additions to improve MOT performance, and a detection-tracklet confidence score is designed and used to scale the similarity measure and implicitly favour high detection confidence and high tracklet confidence pairs in one-stage association.
This paper first adopt the anchor formulation of queries and then use an extra object detector to generate proposals as anchors, providing detection prior to MOTR, a simple yet effective pipeline to bootstrap end-to-end multi-object tracking with a pretrained object detector.
Adding a benchmark result helps the community track progress.