Duality between the Watershed by Image Foresting Transform and the Fuzzy Connectedness Segmentation Approaches

Romaric Audigier, R. Lotufo
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引用次数: 19

Abstract

This paper makes a rereading of two successful image segmentation approaches, the fuzzy connectedness (FC) and the watershed (WS) approaches, by analyzing both by means of the image foresting transform (IFT). This graph-based transform provides a sound framework for analyzing and implementing these methods. This paradigm allows to show the duality existing between the WS by IFT and the FC segmentation approaches. Both can be modeled by an optimal forest computation in a dual form (maximization of the similarities or minimization of the dissimilarities), the main difference being the input parameters: the weights associated to each arc of the graph representing the image. In the WS approach, such weights are based on the (possibly filtered) image gradient values whereas they are based on much more complex affinity values in the FC theory. An efficient algorithm for both FC and IFT-WS computation is proposed. Segmentation robustness issue is also discussed
图像森林变换分水岭与模糊连通性分割方法的对偶性
本文通过对图像森林变换(IFT)的分析,对两种成功的图像分割方法——模糊连通性(FC)和分水岭(WS)方法进行了重新解读。这种基于图的转换为分析和实现这些方法提供了良好的框架。该范例允许通过IFT和FC分割方法显示WS之间存在的二元性。两者都可以通过对偶形式的最优森林计算(相似性最大化或不相似性最小化)来建模,主要区别在于输入参数:与表示图像的图的每个弧相关的权重。在WS方法中,这些权重基于(可能过滤的)图像梯度值,而在FC理论中,它们基于更复杂的亲和值。提出了一种同时用于FC和IFT-WS计算的高效算法。讨论了分割鲁棒性问题
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