Direction diffusion

Bei Tang, G. Sapiro, Vicent Caselles
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引用次数: 56

Abstract

In a number of disciplines, directional data provides a fundamental source of information. A novel framework for isotropic and anisotropic diffusion of directions is presented in this paper. The framework can be applied both to regularize directional data and to obtain multiscale representations of it. The basic idea is to apply and extend results from the theory of harmonic maps in liquid crystals. This theory deals with the regularization of vectorial data, while satisfying the unit norm constraint of directional data. We show the corresponding variational and partial differential equations formulations for isotropic diffusion, obtained from an L/sub 2/ norm, and edge preserving diffusion, obtained from an L/sub 1/ norm. In contrast with previous approaches, the framework is valid for directions in any dimensions, supports non-smooth data, and gives both isotropic and anisotropic formulations. We present a number of theoretical results, open questions, and examples for gradient vectors, optical flow, and color images.
方向扩散
在许多学科中,定向数据提供了基本的信息来源。本文提出了一种新的各向同性和各向异性方向扩散框架。该框架既可以用于规整方向数据,也可以用于获得方向数据的多尺度表示。其基本思想是应用和推广液晶谐波映射理论的结果。该理论在满足方向数据单位范数约束的同时,处理向量数据的正则化问题。我们给出了从L/sub 2/范数得到的各向同性扩散和从L/sub 1/范数得到的保边扩散的相应变分方程和偏微分方程的表达式。与以前的方法相比,该框架对任何维度的方向都有效,支持非光滑数据,并给出各向同性和各向异性的公式。我们提出了一些关于梯度矢量、光流和彩色图像的理论结果、开放问题和示例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
16.50
自引率
0.00%
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