1. Abandoned Object Detection via Temporal Consistency Modeling and Back-Tracing Verification for Visual Surveillance
- Author
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Yi-Ping Hung, Daw-Tung Lin, Shen-Chi Chen, Chu-Song Chen, and Kevin Lin
- Subjects
Pixel ,Computer Networks and Communications ,business.industry ,Computer science ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Cognitive neuroscience of visual object recognition ,Pattern recognition ,Tracing ,Object detection ,Visualization ,Object-class detection ,Video tracking ,Code (cryptography) ,Computer vision ,Artificial intelligence ,Safety, Risk, Reliability and Quality ,business - Abstract
This paper presents an effective approach for detecting abandoned luggage in surveillance videos. We combine short- and long-term background models to extract foreground objects, where each pixel in an input image is classified as a 2-bit code. Subsequently, we introduce a framework to identify static foreground regions based on the temporal transition of code patterns, and to determine whether the candidate regions contain abandoned objects by analyzing the back-traced trajectories of luggage owners. The experimental results obtained based on video images from 2006 Performance Evaluation of Tracking and Surveillance and 2007 Advanced Video and Signal-based Surveillance databases show that the proposed approach is effective for detecting abandoned luggage, and that it outperforms previous methods.
- Published
- 2015
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