张量空间图像分割的图割方法。

James Malcolm, Yogesh Rathi, Allen Tannenbaum
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引用次数: 69

摘要

本文提出了一种将标准图割技术应用于多模态张量值图像分割的新方法。首先通过将数据映射到欧几里德空间来明确考虑张量空间的黎曼性质,在欧几里德空间中,可以从用户初始化的区域计算区域分布的非参数核密度估计。然后将这些分布用作计算图边权重的区域先验。因此,这种方法利用了张量数据的真实变化,在形成概率分布时,在计算距离时尊重其黎曼结构。此外,非参数模型可以推广到任意张量分布,而不像以前的研究中所做的高斯假设。将分割问题投射到图切框架中,就测试数据的初始化而言,产生了一个鲁棒的分割。
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A Graph Cut Approach to Image Segmentation in Tensor Space.

This paper proposes a novel method to apply the standard graph cut technique to segmenting multimodal tensor valued images. The Riemannian nature of the tensor space is explicitly taken into account by first mapping the data to a Euclidean space where non-parametric kernel density estimates of the regional distributions may be calculated from user initialized regions. These distributions are then used as regional priors in calculating graph edge weights. Hence this approach utilizes the true variation of the tensor data by respecting its Riemannian structure in calculating distances when forming probability distributions. Further, the non-parametric model generalizes to arbitrary tensor distribution unlike the Gaussian assumption made in previous works. Casting the segmentation problem in a graph cut framework yields a segmentation robust with respect to initialization on the data tested.

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