Segment Based Diffusion - A Post-Processing Step (Not Only) for Background Subtraction

M. Unger, M. Asbach
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引用次数: 1

Abstract

A classical approach to video object segmentation is background subtraction. Background subtraction starts by estimating a model of the background image of a scene and then calculating the likeliness that a given pixel of the current camera image belongs to the background model. Typically this is done by subtracting the background image from a given frame, where the difference image is usually thresholded and post-processed to find object boundaries. In this paper we present a method for enhanced post-processing that exploits color and texture information of the original video frame. This way we are able to extract pixel-exact object boundaries. Based on direct color segmentation of the video frame, an iterative method analog to biological diffusion and physical heat transfer processes, spreads information from the difference image over segment boundaries. For this purpose, diffusion resistances are defined between adjacent segments, based on color and texture similarities and common contour length. An iterative process calculates and transfers the flux of 'difference energy' between segments of the difference image. The resulting image allows for easy segmentation by thresholding. Experimental results show the validity of our approach.
基于片段的扩散-一个后处理步骤(不只是)背景减法
背景减法是视频对象分割的一种经典方法。背景减法首先估计场景背景图像的模型,然后计算当前相机图像的给定像素属于背景模型的可能性。这通常是通过从给定帧中减去背景图像来完成的,其中差异图像通常是阈值和后处理以找到对象边界。本文提出了一种利用原始视频帧的颜色和纹理信息进行增强后处理的方法。这样我们就可以提取像素精确的物体边界。基于视频帧的直接颜色分割,一种模拟生物扩散和物理传热过程的迭代方法,将差分图像中的信息传播到段边界上。为此,根据颜色和纹理相似性以及共同轮廓长度,在相邻段之间定义扩散阻力。迭代过程计算并传递“差能”在差图像段之间的通量。结果图像允许通过阈值分割容易。实验结果表明了该方法的有效性。
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