Graph theory based image segmentation

Songhao Zhu, Xinshuai Zhu, Qingqing Luo
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引用次数: 6

Abstract

Image segmentation is a fundamental process in many image, video, and computer vision applications. It is very essential and critical to image processing and pattern recognition, and determines the quality of final result of analysis and recognition. This paper presents a semi-supervised strategy to deal with the issue of image segmentation. Each image is first segmented coarsely, and represented as a graph model. Then, a semi-supervised algorithm is utilized to estimate the relevance between labeled nodes and unlabeled nodes to construct a relevance matrix. Finally, a normalized cut criterion is utilized to segment images into meaningful units. The experimental results conducted on Berkeley image databases and MSRC image databases demonstrate the effectiveness of the proposed strategy.
基于图论的图像分割
图像分割是许多图像、视频和计算机视觉应用的基本过程。它在图像处理和模式识别中是非常必要和关键的,它决定了最终分析和识别结果的质量。本文提出了一种半监督策略来处理图像分割问题。每个图像首先被粗分割,并表示为一个图模型。然后,利用半监督算法估计标记节点与未标记节点之间的相关性,构造相关矩阵;最后,利用归一化切割准则将图像分割成有意义的单元。在Berkeley图像数据库和MSRC图像数据库上的实验结果表明了该策略的有效性。
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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