Saddle point detection for connecting objects in 2D images based on mathematic programming restraints

Ken Chen, Yicong Wang, G. Jiang, L. Banta
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引用次数: 0

Abstract

Saddle points formed through morphologic erosion and existing between adjacent connecting objects in 2D images have been applied for segmenting purposes. In this article, a new approach is presented for searching the saddle points in 2D images using mathematic programming restraints for the purpose of ultimately separating the connecting objects. By combining the pixel distribution information in 3D topographic image and mathematic programming restraints for saddle point, the saddle points in the image can thus be identified. In addition, the relation between step selection in the algorithm and detection rate is also explored. The experiment results on the given real particle images suggest the better robustness in saddle point detection algorithm, which undoubtedly lays the practical and theoretic base for touching object segmentation for 2D images.
基于数学规划约束的二维图像连接目标鞍点检测
利用二维图像中存在于相邻连接物体之间的形态侵蚀形成的鞍点进行分割。本文提出了一种利用数学规划约束在二维图像中搜索鞍点的新方法,目的是最终分离连接对象。将三维地形图像中的像素分布信息与鞍点的数学规划约束相结合,实现图像中鞍点的识别。此外,还探讨了算法中的步长选择与检测率之间的关系。在给定的真实粒子图像上的实验结果表明,鞍点检测算法具有较好的鲁棒性,这无疑为二维图像的触摸目标分割奠定了实践和理论基础。
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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