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Bibliographic Details
Main Authors: Socha, Marek, Marczyk, Michał, Kempski, Aleksander, Cogiel, Michał, Foszner, Paweł, Zawiski, Radosław, Staniszewski, Michał
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.21482
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author Socha, Marek
Marczyk, Michał
Kempski, Aleksander
Cogiel, Michał
Foszner, Paweł
Zawiski, Radosław
Staniszewski, Michał
author_facet Socha, Marek
Marczyk, Michał
Kempski, Aleksander
Cogiel, Michał
Foszner, Paweł
Zawiski, Radosław
Staniszewski, Michał
contents GRAP-MOT is a new approach for solving the person MOT problem dedicated to videos of closed areas with overlapping multi-camera views, where person occlusion frequently occurs. Our novel graph-weighted solution updates a person's identification label online based on tracks and the person's characteristic features. To find the best solution, we deeply investigated all elements of the MOT process, including feature extraction, tracking, and community search. Furthermore, GRAP-MOT is equipped with a person's position estimation module, which gives additional key information to the MOT method, ensuring better results than methods without position data. We tested GRAP-MOT on recordings acquired in a closed-area model and on publicly available real datasets that fulfil the requirement of a highly congested space, showing the superiority of our proposition. Finally, we analyzed existing metrics used to compare MOT algorithms and concluded that IDF1 is more adequate than MOTA in such comparisons. We made our code, along with the acquired dataset, publicly available.
format Preprint
id arxiv_https___arxiv_org_abs_2510_21482
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle GRAP-MOT: Unsupervised Graph-based Position Weighted Person Multi-camera Multi-object Tracking in a Highly Congested Space
Socha, Marek
Marczyk, Michał
Kempski, Aleksander
Cogiel, Michał
Foszner, Paweł
Zawiski, Radosław
Staniszewski, Michał
Computer Vision and Pattern Recognition
GRAP-MOT is a new approach for solving the person MOT problem dedicated to videos of closed areas with overlapping multi-camera views, where person occlusion frequently occurs. Our novel graph-weighted solution updates a person's identification label online based on tracks and the person's characteristic features. To find the best solution, we deeply investigated all elements of the MOT process, including feature extraction, tracking, and community search. Furthermore, GRAP-MOT is equipped with a person's position estimation module, which gives additional key information to the MOT method, ensuring better results than methods without position data. We tested GRAP-MOT on recordings acquired in a closed-area model and on publicly available real datasets that fulfil the requirement of a highly congested space, showing the superiority of our proposition. Finally, we analyzed existing metrics used to compare MOT algorithms and concluded that IDF1 is more adequate than MOTA in such comparisons. We made our code, along with the acquired dataset, publicly available.
title GRAP-MOT: Unsupervised Graph-based Position Weighted Person Multi-camera Multi-object Tracking in a Highly Congested Space
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.21482