Real-Time Statistical Background Learning for Foreground Detection under Unstable Illuminations

Dawei Li, Lihong Xu, E. Goodman
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引用次数: 3

Abstract

This work proposes a fast background learning algorithm for foreground detection under changing illumination. Gaussian Mixture Model (GMM) is an effective statistical model in background learning. We first focus on Titterington's online EM algorithm that can be used for real-time unsupervised GMM learning, and then advocate a deterministic data assignment strategy to avoid Bayesian computation. The color of the foreground is apt to be influenced by the environmental illumination that usually produce undesirable effect for GMM updating, however, a collinear feature of pixel intensity under changing light is discovered in RGB color space. This feature is afterward used as a reliable clue to decide which part of mixture to update under changing light. A foreground detection step proposed in early version of this work is employed to extract foreground objects by comparing the estimated background model with the current video frame. Experiments have shown the proposed method is able to achieve satisfactory static background images of scenes as well as is also superior to some mainstream methods in detection performance under both indoor and outdoor scenes.
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不稳定光照下前景检测的实时统计背景学习
本文提出了一种快速背景学习算法,用于光照变化下的前景检测。高斯混合模型(GMM)是一种有效的背景学习统计模型。我们首先研究了Titterington的在线EM算法,该算法可用于实时无监督GMM学习,然后提出了一种确定性数据分配策略,以避免贝叶斯计算。前景的颜色容易受到环境光照的影响,通常会对GMM的更新产生不利的影响,但在RGB色彩空间中,发现了光照变化下像素强度的共线特征。这个特征随后被用作一个可靠的线索来决定在变化的光线下更新混合物的哪一部分。本文采用早期提出的前景检测步骤,通过将估计的背景模型与当前视频帧进行比较,提取前景目标。实验表明,该方法在室内和室外场景下都能获得令人满意的静态场景背景图像,并且在检测性能上也优于一些主流方法。
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