Identifying Loitering Behavior with Trajectory Analysis.

Johnny Núñez, Zenjie Li, Sergio Escalera, Kamal Nasrollahi

IEEE/CVF Winter Conference on Applications of Computer Vision(2024)

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摘要
The act of remaining in a public area for an extended period is commonly referred to as Loitering, and it is often viewed as suspicious activity with regard to public safety. The research landscape on loitering detection is diverse, featuring various definitions and methodologies. This lack of standardization in defining loitering hamper the general-izability of detection methods. Our work, focuses on providing a clear definition of loitering and detecting it through trajectory analysis. We enrich the field of loitering detection research by introducing a dataset with annotated loitering behaviors. Our contribution is to annotate loi- tering behavior in the Long-term Thermal Drift Dataset, which already complies with privacy standards. The dataset features a variety of loitering behaviors observed through a real-world thermal surveillance camera across different environmental scenarios. To identify loitering behavior, we employ trajectory analysis methods. These methods quantify parameters such as movement directionality, pace, and dwell time, providing fundamental aspects for loitering detection studies. The dataset and the code are avail- able on https://github.com/johnnynunez/RS-WACV24_Loitering.
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关键词
Trajectory Analysis,Infrared Imaging,Surveillance Cameras,Convolutional Neural Network,Support Vector Machine,Random Forest,Random Walk,Precision And Recall,3D Space,Multilayer Perceptron,Stochastic Gradient Descent,Bounding Box,Video Clips,Convex Hull,Anomaly Detection,Video Sequences,Geometric Analysis,Geometric Method,Trajectory Features,Area Threshold,Random Trajectories,Ellipse Fitting,Geometric Algorithm,Annotation Data,Specific Context,Annotated Dataset,False Negative
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