Accurate Dynamic Scene Model for Moving Object Detection

Hong Yang, Yihua Tan, J. Tian, Jian Liu
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引用次数: 28

Abstract

Adaptive pixel-wise Gaussian mixture model (GMM) is a popular method to model dynamic scenes viewed by a fixed camera. However, it is not a trivial problem for GMM to capture the accurate mean and variance of a complex pixel. This paper presents a two-layer Gaussian mixture model (TLGMM) of dynamic scenes for moving object detection. The first layer, namely real model, deals with gradually changing pixels specially; the second layer, called on-ready model, focuses on those pixels changing significantly and irregularly. TLGMM can represent dynamic scenes more accurately and effectively. Additionally, a long term and a short term variance are taken into account to alleviate the transparent problems faced by pixel-based methods.
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用于运动目标检测的精确动态场景模型
自适应逐像素高斯混合模型(GMM)是一种常用的模拟固定摄像机拍摄的动态场景的方法。然而,对于GMM来说,准确捕获复杂像素的均值和方差并不是一个简单的问题。提出了一种用于动态场景运动目标检测的两层高斯混合模型。第一层即真实模型,专门处理逐渐变化的像素;第二层,被称为on-ready模型,专注于那些显著和不规则变化的像素。TLGMM可以更准确有效地表示动态场景。此外,还考虑了长期和短期方差,以缓解基于像素的方法面临的透明度问题。
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