Background Subtraction based on Mutual Information

Jesus Miguel Gamboa-Aispuro, R. Aguilar-Ponce, J. L. Tecpanecatl-Xihuitl
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引用次数: 2

Abstract

Motion Detection is major task in every application of computer vision such as video surveillance. Background Subtraction (BS) algorithms have been employed for several years to find a moving objects in a scene. BS has been used in video surveillance due to its simplicity and the fact that cameras are stationary in a video surveillance systems. The present paper introduce a new approach to motion detection through a hierarchical model that uses Mutual Information as a measure of change in the scene. Since pixels in a frame belong to objects, a segmentation in regions of the frame is done by mean-shift algorithm. Then a Mutual information measurement between the segmented region and the incoming frame is performed. A first approach to foreground mask is achieved and later is refined using a modification of the Wronskian Change Detector (WCD). The experimental results show that our proposed algorithm improve the performance in comparison with a pixel based Background Subtraction algorithm mixture of gaussians (MoG), a hierarchical block based Background Subtraction algorithm (HMDRP) and a test of linear independence (WCD).
基于互信息的背景减法
运动检测是视频监控等计算机视觉应用的重要内容。背景减法(BS)算法用于寻找场景中的运动物体已经有几年的历史了。由于其简单性和摄像机在视频监控系统中是固定的这一事实,BS已被用于视频监控中。本文介绍了一种新的运动检测方法,该方法通过层次模型使用互信息作为场景变化的度量。由于帧中的像素属于对象,因此采用mean-shift算法对帧的区域进行分割。然后在分割区域和输入帧之间进行互信息测量。实现了前景掩模的第一种方法,然后使用朗斯基变化检测器(WCD)的修改进行了改进。实验结果表明,与基于像素的混合高斯背景减除算法(MoG)、基于分层块的背景减除算法(HMDRP)和线性独立性测试(WCD)相比,该算法的性能有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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