Background subtraction using spatial mixture of Gaussian model with dynamic shadow filtering

A. N. Rumaksari, S. Sumpeno, A. Wibawa
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引用次数: 7

Abstract

Many applications of computer vision, motion captures nowadays are an active research field. Supported by camera innovation in high definition technology and high-speed processing unit technology make higher degree on object detection standard. We can see it from the increasing number of new methods that have improvement in accuracy. In automatic vehicle surveillance area, Spatial Mixture Gaussian model becomes well-known moving based object detection via background subtraction technique in this decades. This method models particular pixel as mixture of Gaussians distribution with regard to pixel's higher probability of occurrences and variance of each Gaussians in the mixture model. Although, this model has threshold to control the sensitivity of object's motion, it has problem with separating an object from its shadow. This is happening because the shadow attaches to the object. Since they always move in tandem, as the result, detected object area will merge and shadow and object will form into a single unity that is difficult to separate. In accordance with detection, occluded object because of a shadow will decrease detector's accuracy. Therefore, we need to remove shadow, in order to maintain detector's quality of accuracy. Challenge in doing so is there is exist dynamic illumination condition which resulting a nonuniform shadow pixel value. This can cause failure of threshold-based linear shadow casting technique. To solve above-mentioned problem, we need a shadow filter that can adapt to the illumination changes. In this experiment, we have successfully implemented an adaptive shadow filter based on DSD algorithm to improve background subtraction method. Our proposed method has a stable result in outdoor environment dataset and it is proven to be able applied to traffic surveillance video application.
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基于空间混合高斯模型和动态阴影滤波的背景减法
在计算机视觉的众多应用中,运动捕捉是当今一个活跃的研究领域。在摄像机高清技术创新和高速处理单元技术的支持下,对目标检测标准有了更高的要求。我们可以从越来越多的精确度提高的新方法中看到这一点。在汽车自动监控领域,空间混合高斯模型是近年来基于背景减除技术的运动目标检测方法。该方法根据像素在混合模型中较高的出现概率和各高斯分布的方差,将特定像素建模为高斯分布的混合。虽然该模型具有控制物体运动灵敏度的阈值,但在区分物体和阴影方面存在问题。这是因为阴影附着在物体上。由于它们总是串联运动,因此,检测到的物体区域将合并,阴影和物体将形成一个难以分离的单一统一体。根据检测结果,被遮挡的物体由于阴影的存在会降低检测的精度。因此,我们需要去除阴影,以保持探测器的质量精度。这样做的挑战在于存在动态光照条件,导致阴影像素值不均匀。这可能导致基于阈值的线性阴影投射技术的失败。为了解决上述问题,我们需要一种能够适应光照变化的阴影滤光片。在本实验中,我们成功地实现了一种基于DSD算法的自适应阴影滤波器,以改进背景减除方法。该方法在室外环境数据集上得到了稳定的结果,并被证明可以应用于交通监控视频。
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