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Autori principali: Siemon, Mia, Nikolov, Ivan, Moeslund, Thomas B., Nasrollahi, Kamal
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2503.19588
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author Siemon, Mia
Nikolov, Ivan
Moeslund, Thomas B.
Nasrollahi, Kamal
author_facet Siemon, Mia
Nikolov, Ivan
Moeslund, Thomas B.
Nasrollahi, Kamal
contents In Pose-based Video Anomaly Detection prior art is rooted on the assumption that abnormal events can be mostly regarded as a result of uncommon human behavior. Opposed to utilizing skeleton representations of humans, however, we investigate the potential of learning recurrent motion patterns of normal human behavior using 2D contours. Keeping all advantages of pose-based methods, such as increased object anonymization, the shift from human skeletons to contours is hypothesized to leave the opportunity to cover more object categories open for future research. We propose formulating the problem as a regression and a classification task, and additionally explore two distinct data representation techniques for contours. To further reduce the computational complexity of Pose-based Video Anomaly Detection solutions, all methods in this study are based on shallow Neural Networks from the field of Deep Learning, and evaluated on the three most prominent benchmark datasets within Video Anomaly Detection and their human-related counterparts, totaling six datasets. Our results indicate that this novel perspective on Pose-based Video Anomaly Detection marks a promising direction for future research.
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id arxiv_https___arxiv_org_abs_2503_19588
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Video Anomaly Detection with Contours -- A Study
Siemon, Mia
Nikolov, Ivan
Moeslund, Thomas B.
Nasrollahi, Kamal
Computer Vision and Pattern Recognition
In Pose-based Video Anomaly Detection prior art is rooted on the assumption that abnormal events can be mostly regarded as a result of uncommon human behavior. Opposed to utilizing skeleton representations of humans, however, we investigate the potential of learning recurrent motion patterns of normal human behavior using 2D contours. Keeping all advantages of pose-based methods, such as increased object anonymization, the shift from human skeletons to contours is hypothesized to leave the opportunity to cover more object categories open for future research. We propose formulating the problem as a regression and a classification task, and additionally explore two distinct data representation techniques for contours. To further reduce the computational complexity of Pose-based Video Anomaly Detection solutions, all methods in this study are based on shallow Neural Networks from the field of Deep Learning, and evaluated on the three most prominent benchmark datasets within Video Anomaly Detection and their human-related counterparts, totaling six datasets. Our results indicate that this novel perspective on Pose-based Video Anomaly Detection marks a promising direction for future research.
title Video Anomaly Detection with Contours -- A Study
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.19588