Shape Analysis with Hyperbolic Wasserstein Distance.

Jie Shi, Wen Zhang, Yalin Wang
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引用次数: 19

Abstract

Shape space is an active research field in computer vision study. The shape distance defined in a shape space may provide a simple and refined index to represent a unique shape. Wasserstein distance defines a Riemannian metric for the Wasserstein space. It intrinsically measures the similarities between shapes and is robust to image noise. Thus it has the potential for the 3D shape indexing and classification research. While the algorithms for computing Wasserstein distance have been extensively studied, most of them only work for genus-0 surfaces. This paper proposes a novel framework to compute Wasserstein distance between general topological surfaces with hyperbolic metric. The computational algorithms are based on Ricci flow, hyperbolic harmonic map, and hyperbolic power Voronoi diagram and the method is general and robust. We apply our method to study human facial expression, longitudinal brain cortical morphometry with normal aging, and cortical shape classification in Alzheimer's disease (AD). Experimental results demonstrate that our method may be used as an effective shape index, which outperforms some other standard shape measures in our AD versus healthy control classification study.

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双曲Wasserstein距离的形状分析。
形状空间是计算机视觉研究中一个活跃的研究领域。在形状空间中定义的形状距离可以提供一个简单而精细的索引来表示一个独特的形状。瓦瑟斯坦距离定义了瓦瑟斯坦空间的黎曼度规。它本质上测量形状之间的相似性,并且对图像噪声具有鲁棒性。因此,该方法对三维形状标引和分类研究具有一定的潜力。虽然计算Wasserstein距离的算法已经被广泛研究,但大多数算法只适用于0类曲面。本文提出了一种计算具有双曲度量的一般拓扑曲面间Wasserstein距离的新框架。计算算法基于Ricci流、双曲调和图和双曲幂Voronoi图,具有通用性和鲁棒性。我们应用我们的方法研究人类面部表情、正常衰老的大脑皮层纵向形态测量和阿尔茨海默病(AD)的皮层形状分类。实验结果表明,我们的方法可以作为一种有效的形状指标,在我们的AD与健康对照分类研究中优于其他一些标准的形状指标。
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CiteScore
43.50
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