图像分割
切割
分割
尺度空间分割
最小切口
基于分割的对象分类
边界(拓扑)
数学
基于最小生成树的图像分割
范围分割
人工智能
最大切割量
像素
模式识别(心理学)
计算机科学
计算机视觉
图形
算法
组合数学
数学分析
作者
Song Wang,Jeffrey Mark Siskind
标识
DOI:10.1109/tpami.2003.1201819
摘要
This paper proposesanew cost function, cut ratio, for segmentingimages using graph-basedmethods.The cut ratio is defined as the ratio of the corresponding sums of two different weights of edges along the cut boundary and models the mean affinity between the segments separated by the boundary per unit boundary length. This new cost function allows the image perimeter to be segmented, guarantees that the segments produced by bipartitioning are connected, and does not introduce a size, shape, smoothness, or boundarylength bias. The latter allows it to produce segmentations where boundaries are aligned with image edges. Furthermore, the cut-ratio cost function allows efficient iterated region-based segmentation as well as pixel-based segmentation. These properties may be useful for some image-segmentation applications. While the problem of finding a minimum ratio cut in an arbitrary graph is NP-hard, one can find a minimum ratio cut in the connected planar graphs that arise during imagesegmentation in polynomial time. While the cut ratio, alone, is not sufficient as a baseline method for image segmentation, it forms a good basis for an extended method of image segmentation when combined with a small number of standard techniques. We present an implemented algorithm for finding a minimum ratio cut, prove its correctness, discuss its application to imagesegmentation, and present the results of segmentinga number of medical and natural images using our techniques.
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