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Improving the stochastic watershed

机译:改善随机分水岭

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The stochastic watershed is an unsupervised segmentation tool recently proposed by Angulo and Jeulin. By repeated application of the seeded watershed with randomly placed markers, a probability density function for object boundaries is created. In a second step, the algorithm then generates a meaningful segmentation of the image using this probability density function. The method performs best when the image contains regions of similar size, since it tends to break up larger regions and merge smaller ones. We propose two simple modifications that greatly improve the properties of the stochastic watershed: (1) add noise to the input image at every iteration, and (2) distribute the markers using a randomly placed grid. The noise strength is a new parameter to be set, but the output of the algorithm is not very sensitive to this value. In return, the output becomes less sensitive to the two parameters of the standard algorithm. The improved algorithm does not break up larger regions, effectively making the algorithm useful for a larger class of segmentation problems.
机译:随机分水岭是Angulo和Jeulin最近提出的无监督分割工具。通过重复应用带有随机放置的标记的种子分水岭,可以创建物体边界的概率密度函数。在第二步骤中,该算法然后使用该概率密度函数生成有意义的图像分割。当图像包含相似大小的区域时,该方法效果最佳,因为它倾向于分解较大的区域并合并较小的区域。我们提出了两个简单的修改方法,可以极大地改善随机分水岭的特性:(1)在每次迭代时向输入图像添加噪声,(2)使用随机放置的网格分布标记。噪声强度是要设置的新参数,但是算法的输出对此值不是很敏感。作为回报,输出对标准算法的两个参数变得不太敏感。改进的算法不会分解较大的区域,有效地使该算法可用于较大类别的分割问题。

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