CVAIAug 3, 2023

ReIDTrack: Multi-Object Track and Segmentation Without Motion

arXiv:2308.01622v13 citationsh-index: 92
Originality Incremental advance
AI Analysis

This work addresses multi-object tracking and segmentation for computer vision researchers, offering a simple and effective method that is incremental in its approach.

The paper tackles multi-object tracking and segmentation by removing motion information and relying solely on high-performance detection and appearance models, achieving 1st place on the MOTS track and 2nd on the MOT track in the CVPR2023 WAD workshop.

In recent years, dominant Multi-object tracking (MOT) and segmentation (MOTS) methods mainly follow the tracking-by-detection paradigm. Transformer-based end-to-end (E2E) solutions bring some ideas to MOT and MOTS, but they cannot achieve a new state-of-the-art (SOTA) performance in major MOT and MOTS benchmarks. Detection and association are two main modules of the tracking-by-detection paradigm. Association techniques mainly depend on the combination of motion and appearance information. As deep learning has been recently developed, the performance of the detection and appearance model is rapidly improved. These trends made us consider whether we can achieve SOTA based on only high-performance detection and appearance model. Our paper mainly focuses on exploring this direction based on CBNetV2 with Swin-B as a detection model and MoCo-v2 as a self-supervised appearance model. Motion information and IoU mapping were removed during the association. Our method wins 1st place on the MOTS track and wins 2nd on the MOT track in the CVPR2023 WAD workshop. We hope our simple and effective method can give some insights to the MOT and MOTS research community. Source code will be released under this git repository

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