动态场景中运动目标检测的精确背景建模

Salma Kammoun Jarraya, Mohamed Hammami, H. Ben-Abdallah
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引用次数: 10

摘要

在视频序列中快速准确的前景检测是许多计算机视觉应用的第一步。本文提出了一种新的背景建模方法,该方法在彩色和灰色空间中进行操作,并对熵信息进行管理以获得像素状态卡。我们的方法是递归的,并且在将像素分类为前景或背景时不需要一个训练周期来处理各种问题。首先对像素状态卡进行分析,建立动态矩阵。后者用于有选择地更新背景模型。其次,消除运动区域中的噪声和孔洞,去除无趣的运动区域,细化前景形状。通过定量评价和定性评价的对比研究表明,在视频中,即使存在突如其来的渐变照明变化、摄像机抖动、背景成分变化、鬼影、前景速度等各种问题,我们的方法也能高效准确地检测出前景。
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Accurate Background Modeling for Moving Object Detection in a Dynamic Scene
Fast and accurate foreground detection in video sequences is the first step in many computer vision applications. In this paper, we propose a new method for background modeling that operates in color and gray spaces and that manages the entropy information to obtain the pixel state card. Our method is recursive and does not require a training period to handle various problems when classify pixels into either foreground or background. First, it starts by analyzing the pixel state card to build a dynamic matrix. This latter is used to selectively update background model. Secondly, our method eliminates noise and holes from the moving areas, removes uninteresting moving regions and refines the shape of foregrounds. A comparative study through quantitative and qualitative evaluations shows that our method can detect foreground efficiently and accurately in videos even in the presence of various problems including sudden and gradual illumination changes, shaking camera, background component changes, ghost, and foreground speed.
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