基于对数正态分布和伽玛分布模型的两种改进的Otsu图像分割方法

D. Alsaeed, A. Bouridane, A. Elzaart, R. Sammouda
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引用次数: 35

摘要

Otsu的图像分割方法是阈值选择的最佳方法之一。Otsu方法通过最大化类间方差找到最优阈值;Otsu算法基于灰度直方图,该直方图由高斯分布的和估计。在某些类型的图像中,图像数据不适合高斯分布模型。本研究的目的是发展和比较两种修正版的Otsu方法,一种是基于对数正态分布(Otsu-Lognormal),另一种是基于Gamma分布(Otsu-Gamma);在每个模型的基础上修正最大簇间方差。将这两种方法应用于多幅图像上,得到了令人满意的实验结果。对分割后的图像进行评估,结果表明,与高斯分布的原始Otsu方法相比,Otsu- gamma方法和Otsu- lognormal方法都能更好地估计出最优阈值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two modified Otsu image segmentation methods based on Lognormal and Gamma distribution models
Otsu's method of image segmentation is one of the best methods for threshold selection. With Otsu's method an optimum threshold is found by maximizing the between-class variance; Otsu algorithm is based on the gray-level histogram which is estimated by a sum of Gaussian distributions. In some type of images, image data does not best fit in a Gaussian distribution model. The objective of this study is to develop and compare two modified versions of Otsu method, one is based on Lognormal distribution (Otsu-Lognormal), while the other is based on Gamma distribution (Otsu-Gamma); the maximum between-cluster variance is modified based on each model. The two proposed methods were applied on several images and promising experimental results were obtained. Evaluation of the resulting segmented images shows that both Otsu-Gamma method and Otsu-Lognormal yield better estimation of the optimal threshold than does the original Otsu method with Gaussian distribution (Otsu).
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