Performance analysis of Lab2000HL color space for background subtraction

M. Balcilar, F. Karabiber, A. Sonmez
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引用次数: 13

Abstract

Background subtraction techniques are commonly used to identify moving objects in computer vision applications. This is still a challenging problem, especially when there is a non-stationary background such as a waving sea, or in the case where camera oscillations exist, or when videos have non-stationary backgrounds because of sudden changes in lightning. One of the most significant sub-tasks of a generic background subtraction technique is the background modeling step, which determines how background will be represented. A wide range of the literature is upon development of statistical models for background modeling. Especially, Gaussian Mixture Model (GMM) is a basic method. In this method, values of each pixel's features with respect to time are represented with a few normal distributions. The problem with which features pixels will be represented is an important research topic. Recent studies involve applications using different color space with both pixel and region based features. In this study, in addition to color spaces used in literature, new color space which have linear hue band and named as Lab2000HL is aimed to test. The segmentation of foreground/background performance is measured with average precision rate. Nine different videos from I2R dataset having non-static background examples are used as test dataset.
Lab2000HL色彩空间背景减法的性能分析
背景减法技术是计算机视觉中常用的运动物体识别技术。这仍然是一个具有挑战性的问题,特别是当有一个非静止的背景,如波浪般的大海,或者在摄像机振荡存在的情况下,或者当视频由于闪电的突然变化而具有非静止的背景时。背景建模步骤是通用背景减除技术中最重要的子任务之一,它决定了背景的表示方式。大量的文献是关于背景建模的统计模型的发展。其中,高斯混合模型(GMM)是一种基本方法。在这种方法中,每个像素的特征值相对于时间用几个正态分布表示。特征像素的表示问题是一个重要的研究课题。最近的研究涉及使用基于像素和基于区域的特征的不同颜色空间的应用。在本研究中,除了文献中使用的色彩空间外,还将对具有线性色相带的新型色彩空间Lab2000HL进行测试。以平均精度率测量前景/背景分割性能。使用来自I2R数据集的9个具有非静态背景示例的不同视频作为测试数据集。
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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