student dangerous behavior detection in school
- URL: http://arxiv.org/abs/2202.09550v1
- Date: Sat, 19 Feb 2022 08:23:36 GMT
- Title: student dangerous behavior detection in school
- Authors: Huayi Zhou, Fei Jiang, Hongtao Lu
- Abstract summary: We focus on detecting dangerous behaviors of students automatically, which faces numerous challenges.
We propose a novel end-to-end dangerous behavior detection method, named DangerDet, that combines multi-scale body features and keypoints-based pose features.
On our dataset, DangerDet achieves 71.0% mAP with about 11 FPS.
- Score: 27.02391566687007
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Video surveillance systems have been installed to ensure the student safety
in schools. However, discovering dangerous behaviors, such as fighting and
falling down, usually depends on untimely human observations. In this paper, we
focus on detecting dangerous behaviors of students automatically, which faces
numerous challenges, such as insufficient datasets, confusing postures,
keyframes detection and prompt response. To address these challenges, we first
build a danger behavior dataset with locations and labels from surveillance
videos, and transform action recognition of long videos to an object detection
task that avoids keyframes detection. Then, we propose a novel end-to-end
dangerous behavior detection method, named DangerDet, that combines multi-scale
body features and keypoints-based pose features. We could improve the accuracy
of behavior classification due to the highly correlation between pose and
behavior. On our dataset, DangerDet achieves 71.0\% mAP with about 11 FPS. It
keeps a better balance between the accuracy and time cost.
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