Blanche Buet, J. Mirebeau, Y. Gennip, François Desquilbet, Johann Dréo, G. P. Leonardi, S. Masnou, Carola-Bibian Schönlieb
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引用次数: 1
摘要
这篇论文源于2018年在法国阿卡松举行的第九届曲线与曲面国际会议上的一个小型研讨会,由Simon Masnou和Carola-Bibiane Schonlieb组织。这次小型研讨会的特色是几何偏微分方程和变分模型的各种最新发展,这些模型直接或间接地与图像和数据处理中的几个问题有关。本文收集了三个贡献,这些贡献与三位迷你研讨会发言人的谈话有关:Blanche Buet, Jean-Marie Mirebeau和Yves van Gennip。Yves van Gennip的第一篇文章(第1节)简要概述了图上偏微分方程领域的最新活动,但并不打算详尽。主要重点是与图金兹堡-朗道变分模型相关的技术,但在本节末尾也提到了该领域的其他一些研究。第二个贡献(第2节),由Jean-Marie Mirebeau, Francois Desquilbet, Johann Dreo和Frederic Barbaresco撰写,提出了一种最新的数值方法,用于计算具有数据驱动项和二阶曲率惩罚项的能量全局最小化曲线。讨论了图像分割的应用,并详细描述了雷达网络配置的最新进展,其中最优曲线代表对手的轨迹。最后,第3节专门介绍了Blanche Buet, Gian Paolo Leonardi和Simon Masnou的工作,该工作基于几何测量理论的变分概念,对一类广义曲面,特别是点云的弱曲率的定义和近似。
Partial differential equations and variational methods for geometric processing of images
This paper arose from a minisymposium held in 2018 at the 9th International Conference on Curves and Surface in Arcachon, France, and organized by Simon Masnou and Carola-Bibiane Schonlieb. This minisymposium featured a variety of recent developments of geometric partial differential equations and variational models which are directly or indirectly related to several problems in image and data processing. The current paper gathers three contributions which are in connection with the talks of three minisymposium speakers: Blanche Buet, Jean-Marie Mirebeau, and Yves van Gennip. The first contribution (Section 1) by Yves van Gennip provides a short overview of recent activity in the field of PDEs on graphs, without aiming to be exhaustive. The main focus is on techniques related to the graph Ginzburg–Landau variational model, but some other research in the field is also mentioned at the end of the section. The second contribution (Section 2), written by Jean-Marie Mirebeau, Francois Desquilbet, Johann Dreo, and Frederic Barbaresco presents a recent numerical method devoted to computing curves that globally minimize an energy featuring both a data driven term, and a second order curvature penalizing term. Applications to image segmentation are discussed, and recent progress on radar network configuration, in which the optimal curves represent an opponent’s trajectories, is described in detail. Lastly, Section 3 is devoted to a work by Blanche Buet, Gian Paolo Leonardi, and Simon Masnou on the definition and the approximation of weak curvatures for a large class of generalized surfaces, and in particular for point clouds, based on the geometric measure theoretic notion of varifolds.