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首页> 外文期刊>Image Processing, IEEE Transactions on >Segmentation of Stochastic Images With a Stochastic Random Walker Method
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Segmentation of Stochastic Images With a Stochastic Random Walker Method

机译:随机随机沃克方法对随机图像进行分割

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We present an extension of the random walker segmentation to images with uncertain gray values. Such gray-value uncertainty may result from noise or other imaging artifacts or more general from measurement errors in the image acquisition process. The purpose is to quantify the influence of the gray-value uncertainty onto the result when using random walker segmentation. In random walker segmentation, a weighted graph is built from the image, where the edge weights depend on the image gradient between the pixels. For given seed regions, the probability is evaluated for a random walk on this graph starting at a pixel to end in one of the seed regions. Here, we extend this method to images with uncertain gray values. To this end, we consider the pixel values to be random variables (RVs), thus introducing the notion of stochastic images. We end up with stochastic weights for the graph in random walker segmentation and a stochastic partial differential equation (PDE) that has to be solved. We discretize the RVs and the stochastic PDE by the method of generalized polynomial chaos, combining the recent developments in numerical methods for the discretization of stochastic PDEs and an interactive segmentation algorithm. The resulting algorithm allows for the detection of regions where the segmentation result is highly influenced by the uncertain pixel values. Thus, it gives a reliability estimate for the resulting segmentation, and it furthermore allows determining the probability density function of the segmented object volume.
机译:我们提出了将随机沃克分割扩展为具有不确定灰度值的图像。此类灰度值不确定性可能是由噪声或其他成像伪像引起的,或更常见的是由图像采集过程中的测量误差引起的。目的是量化使用随机Walker分割时灰度值不确定性对结果的影响。在随机沃克分割中,从图像构建加权图,其中边缘权重取决于像素之间的图像梯度。对于给定的种子区域,在该图上评估从像素开始到种子区域之一结束的随机游走的概率。在这里,我们将此方法扩展到具有不确定灰度值的图像。为此,我们认为像素值是随机变量(RVs),因此引入了随机图像的概念。我们最终在随机沃克分割中获得了图的随机权重,并且必须解决随机偏微分方程(PDE)。我们通过广义多项式混沌的方法对RVs和随机PDE进行离散化,结合随机PDEs离散化的数值方法和交互式分割算法的最新进展。所得的算法允许检测其中分割结果受不确定像素值高度影响的区域。因此,它给出了所得分割的可靠性估计,并且还允许确定分割后的物体体积的概率密度函数。

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