Abstract
Processing a video stream to segment foreground objects from the background is a critical first step in many computer vision applications. Background subtraction (BGS) is a commonly used technique for achieving this segmentation. The popularity of BGS largely comes from its computational efficiency, which allows applications such as human-computer interaction, video surveillance, and traffic monitoring to meet their real-time goals. Numerous BGS algorithms and a number of post-processing techniques that aim to improve the results of these algorithms have been proposed. In this paper, we evaluate several popular, state-of-the-art BGS algorithms and examine how post-processing techniques affect their performance. Our experimental results demonstrate that post-processing techniques can significantly improve the foreground segmentation masks produced by a BGS algorithm. We provide recommendations for achieving robust foreground segmentation based on the lessons learned performing this comparative study. © 2008 IEEE.
Cite
CITATION STYLE
Parks, D. H., & Fels, S. S. (2008). Evaluation of background subtraction algorithms with post-processing. In Proceedings - IEEE 5th International Conference on Advanced Video and Signal Based Surveillance, AVSS 2008 (pp. 192–199). https://doi.org/10.1109/AVSS.2008.19
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