Using Resources Competition and Memory Cell Development to Select the Best GMM for Background Subtraction

Wafa Nebili, Brahim Farou, Hamid Seridi
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引用次数: 1

Abstract

Background subtraction is an essential step in the process of monitoring videos. Several works have proposed models to differentiate the background pixels from the foreground pixels. Mixtures of Gaussian (GMM) are among the most popular models for a such problem. However, the use of a fixed number of Gaussians influence on their results quality. This article proposes an improvement of the GMM based on the use of the artificial immune recognition system (AIRS) to generate and introduce new Gaussians instead of using a fixed number of Gaussians. The proposed approach exploits the robustness of the mutation function in the generation phase of the new ARBs to create new Gaussians. These Gaussians are then filtered into the resource competition phase in order to keep only ones that best represent the background. The system tested on Wallflower and UCSD datasets has proven its effectiveness against other state-of-art methods.
利用资源竞争和存储单元发展选择最佳GMM进行背景减法
背景减法是视频监控过程中必不可少的步骤。一些研究已经提出了区分背景像素和前景像素的模型。高斯混合模型(GMM)是解决这类问题最流行的模型之一。但是,使用固定数量的高斯函数会影响其结果的质量。本文提出了一种基于人工免疫识别系统(artificial immune recognition system, AIRS)的GMM改进方法,利用人工免疫识别系统(artificial immune recognition system, AIRS)生成和引入新的高斯分布,而不是使用固定数量的高斯分布。该方法利用突变函数在新arb生成阶段的鲁棒性来创建新的高斯分布。然后将这些高斯函数过滤到资源竞争阶段,以便只保留最能代表背景的高斯函数。该系统在Wallflower和UCSD数据集上进行了测试,证明了其对其他最先进方法的有效性。
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