首页> 外文会议>Conference on Image Processing: Algorithms and Systems III; 20040119-20040121; San Jose,CA; US >Real-time Non-parametric Background Modeling Using Moving Histogram Method for Visual Surveillance
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Real-time Non-parametric Background Modeling Using Moving Histogram Method for Visual Surveillance

机译:使用移动直方图方法进行视觉监视的实时非参数背景建模

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The background and foreground modeling is essential in tracking objects from the scenes taken by the stationary camera. We suggest a background model using moving histogram method. A moving histogram, which can be called pixel-wise approach, is time-dependent and can be regarded as a probability density function (pdf) of intensity in image sequence. This moving histogram is updated using image sequence from a stationary camera and is used to calculate the probability of which a pixel in incoming image belongs to background model. Pixels failed in entering into the background model can be candidates for foreground objects. These pixels are classified into foreground ones by comparing with other candidate pixels in different image frames. For pixel classification, our background process consists of queue memory which stores recently acquired images. The background process updates moving histogram for each (x, y) pixel and computes maximum frequency pixel value with low computation. After updating the moving histogram, the background process classifies each pixel as the moving pixel or the background pixel. The classification is difficult because of the slow change in background brightness, slow moving objects, clutters, and the shadow. We solve this problem heuristically. The moving histogram consists of several models (multi-modal, vehicle, background, shadow, clutter). We can compute the distance between the incoming pixel value and each model. And we use threshold with Euler numbers for foreground segmentation. The background and the segmentation process need small computation and can be adapted easily to real-time system.
机译:背景和前景建模对于从固定相机拍摄的场景跟踪对象至关重要。我们建议使用移动直方图方法的背景模型。移动直方图(可以称为逐像素方法)与时间有关,可以视为图像序列中强度的概率密度函数(pdf)。使用来自固定摄像机的图像序列更新此移动直方图,并用于计算传入图像中的像素属于背景模型的概率。无法进入背景模型的像素可以作为前景对象的候选对象。通过与不同图像帧中的其他候选像素进行比较,将这些像素分类为前景像素。对于像素分类,我们的后台过程由存储最近获取的图像的队列存储器组成。后台进程为每个(x,y)像素更新移动直方图,并以较低的计算量计算最大频率像素值。在更新移动直方图之后,背景处理将每个像素分类为移动像素或背景像素。由于背景亮度变化缓慢,物体移动缓慢,杂乱无章和阴影,因此分类很困难。我们试探性地解决了这个问题。移动直方图由几个模型组成(多模式,车辆,背景,阴影,混乱)。我们可以计算输入像素值与每个模型之间的距离。并且我们将阈值与Euler数一起用于前景分割。背景和分割过程需要很少的计算,并且可以轻松地适应实时系统。

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