首页> 外文会议>Acoustics, Speech and Signal Processing, 2007. ICASSP 2007 >Adaptive Foreground Object Extraction for Real-Time Video Surveillance with Lighting Variations
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Adaptive Foreground Object Extraction for Real-Time Video Surveillance with Lighting Variations

机译:具有照明变化的实时视频监控的自适应前景对象提取

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In this paper we present an adaptive foreground object extraction algorithm for real-time video surveillance. The proposed algorithm improves the previous Gaussian mixture background models (GMMs) by applying a two-stage foreground/background classification procedure to remove the undesirable subtraction results due to shadow, automatic white balance, and sudden illumination change. The traditional background subtraction technique usually cannot work well for situations with lighting variations in the scene. In the proposed two-stage classification, an adaptive classifier is applied to the foreground pixels in a pixel-wise manner based on the normalized color and brightness gain information. Secondly, the remaining foreground candidate pixels are grouped into regions and the corresponding background regions are compared to check if they are foreground regions. Experimental results on some real surveillance video are shown to demonstrate the robustness of the proposed adaptive foreground extraction algorithm under a variety of different environments with lighting variations
机译:在本文中,我们提出了一种用于实时视频监控的自适应前景对象提取算法。所提出的算法通过应用两阶段前景/背景分类程序来消除由于阴影,自动白平衡和突然照明变化而导致的不良相减结果,从而改进了先前的高斯混合背景模型(GMM)。传统的背景扣除技术通常不适用于场景中光线变化的情况。在提出的两阶段分类中,基于归一化的颜色和亮度增益信息,以像素方式将自适应分类器应用于前景像素。其次,将剩余的前景候选像素分组为区域,并比较对应的背景区域以检查它们是否为前景区域。展示了一些真实监控视频的实验结果,以证明所提出的自适应前景提取算法在光照变化的各种不同环境下的鲁棒性

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