Crime scene classification from skeletal trajectory analysis in
surveillance settings
- URL: http://arxiv.org/abs/2207.01687v1
- Date: Mon, 4 Jul 2022 19:37:06 GMT
- Title: Crime scene classification from skeletal trajectory analysis in
surveillance settings
- Authors: Alina-Daniela Matei, Estefania Talavera, Maya Aghaei
- Abstract summary: Video anomaly analysis is a core task actively pursued in the field of computer vision.
In this work, we address the task of human-related crime classification.
In our proposed approach, the human body in video frames, represented as skeletal joints trajectories, is used as the main source of exploration.
- Score: 0.15469452301122172
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Video anomaly analysis is a core task actively pursued in the field of
computer vision, with applications extending to real-world crime detection in
surveillance footage. In this work, we address the task of human-related crime
classification. In our proposed approach, the human body in video frames,
represented as skeletal joints trajectories, is used as the main source of
exploration. First, we introduce the significance of extending the ground truth
labels for HR-Crime dataset and hence, propose a supervised and unsupervised
methodology to generate trajectory-level ground truth labels. Next, given the
availability of the trajectory-level ground truth, we introduce a
trajectory-based crime classification framework. Ablation studies are conducted
with various architectures and feature fusion strategies for the representation
of the human trajectories. The conducted experiments demonstrate the
feasibility of the task and pave the path for further research in the field.
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