In this paper, a pixel-based background modeling method, which uses nonparametric kernel density estimation, is proposed. To reduce the burden of image storage, we modify the original KDE method by using the first frame to initialize it and update it subsequently at every frame by controlling the learning rate according to the situations. We apply an adaptive threshold method based on image changes to effectively subtract the dynamic backgrounds. The devised scheme allows the proposed method to automatically adapt to various environments and effectively extract the foreground. The method presented here exhibits good performance and is suitable for dynamic background environments. The algorithm is tested on various video sequences and compared with other state-of-the-art background subtraction methods so as to verify its performance.
Jianzhao CaoOsuji Chukwunonso VictorOdoom Manfred GilbertChangtao Wang
Bineng ZhongShaohui LiuHongxun Yao
田岳鑫 Tian Yuexin高昆 Gao Kun刘泽文 Liu Zewen舒郁文 Shu Yuwen倪国强 Ni Guoqiang