Region Merging Strategy Using Statistical Analysis for Interactive Image Segmentation on Dental Panoramic Radiographs

A. Arifin, R. Indraswari, N. Suciati, E. Astuti, D. A. Navastara
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引用次数: 14

Abstract

In low contrast images such as dental panoramic radiographs, the optimum parameters for automatic image segmentation is not easily determined. Semi-automatic image segmentation which is interactively guided by user is one alternative that could provide a good segmentation results. In this paper we proposed a novel strategy of region merging in interactive image segmentation using discriminant analysis on dental panoramic radiographs. A new similarity measurement among regions is introduced. This measurement merges regions which have minimal inter-class variance either with object or background cluster. Since the representative sample regions are selected by user, the similarity between merged regions with the corresponded samples could be preserved. Experimental results show that the proposed region merging strategy give a high segmentation accuracy both for low contrast and natural images.
基于统计分析的区域合并策略在牙科全景x线片交互式图像分割中的应用
在牙科全景x线片等低对比度图像中,自动图像分割的最佳参数不容易确定。半自动图像分割由用户交互式地引导另一个选择,可以提供一个良好的分割结果。本文提出了一种基于判别分析的交互式图像分割区域合并策略。提出了一种新的区域间相似性度量方法。该测量将类间方差最小的区域与目标或背景聚类合并。由于具有代表性的样本区域是由用户选择的,因此可以保持合并后的区域与相应样本的相似性。实验结果表明,所提出的区域合并策略对低对比度和自然图像都有较高的分割精度。
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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