Abnormal Behavior Detection Based on Target Analysis
- URL: http://arxiv.org/abs/2107.13706v1
- Date: Thu, 29 Jul 2021 02:03:47 GMT
- Title: Abnormal Behavior Detection Based on Target Analysis
- Authors: Luchuan Song, Bin Liu, Huihui Zhu, Qi Chu, Nenghai Yu
- Abstract summary: We propose a multivariate fusion method that analyzes each target through three branches: object, action and motion.
The information that these branches focus on is different, and they can complement each other and jointly detect abnormal behavior.
- Score: 57.78993932008633
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Abnormal behavior detection in surveillance video is a pivotal part of the
intelligent city. Most existing methods only consider how to detect anomalies,
with less considering to explain the reason of the anomalies. We investigate an
orthogonal perspective based on the reason of these abnormal behaviors. To this
end, we propose a multivariate fusion method that analyzes each target through
three branches: object, action and motion. The object branch focuses on the
appearance information, the motion branch focuses on the distribution of the
motion features, and the action branch focuses on the action category of the
target. The information that these branches focus on is different, and they can
complement each other and jointly detect abnormal behavior. The final abnormal
score can then be obtained by combining the abnormal scores of the three
branches.
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