A level-set method for inhomogeneous image segmentation with application to breast thermography images

Asma Shamsi Koshki, M. Ahmadzadeh, M. Zekri, S. Sadri, E. Mahmoudzadeh
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引用次数: 1

Abstract

Various level-set methods have been suggested for segmenting images with intensity inhomogeneity as local region-based models. The challenge in these methods is segmenting the inhomogeneous images with smooth edges. These methods cannot properly segment regions with smooth edges in inhomogeneous images. This paper presents a new local region-based active contour model called local self-weighted active contour model. In the proposed method, a novel different weighting technique is applied. In this model, the weight of each neighbour pixel in the energy function is set by a function of its intensity and not its geometrical distance regarding the central pixel as previous methods. Considering this, the presented approach can segment regions with smooth edges in the presence of inhomogeneity as breast thermography images. The experimental results of applying the model on heterogeneous images containing synthetic images and medical images, especially breast thermography images, are compared with well-known local level-set methods which show the perfect capability of the model. The segmentation results were evaluated using the F-score, accuracy, precision and recall criteria. The results show values of 0.8, 0.62, 0.73 and 0.82 for the average accuracy, F-score, precision and recall criteria on the segmentation of breast thermography images, respectively.
非均匀图像分割的水平集方法及其在乳腺热成像图像中的应用
对于灰度不均匀的图像,人们提出了不同的水平集分割方法作为基于局部区域的模型。这些方法的难点在于对边缘光滑的非均匀图像进行分割。这些方法不能很好地分割非均匀图像中边缘光滑的区域。提出了一种新的基于局部区域的活动轮廓线模型——局部自加权活动轮廓线模型。在该方法中,采用了一种新的不同加权技术。在该模型中,能量函数中每个相邻像素的权重由其强度函数设置,而不是像以前的方法那样由其与中心像素的几何距离函数设置。考虑到这一点,本文提出的方法可以在存在不均匀性的情况下分割边缘光滑的区域作为乳房热成像图像。将该模型应用于包含合成图像和医学图像的异构图像,特别是乳房热成像图像的实验结果与已知的局部水平集方法进行了比较,表明了该模型的良好性能。采用f值、准确率、精密度和召回率标准对分割结果进行评价。结果表明,乳腺热成像图像分割的平均准确率为0.8,F-score为0.62,精密度为0.73,召回率为0.82。
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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