Texture segmentation method for computer-assisted dermatologic diagnostic system

Nataliya P. Volkova, A. Ishchenko
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Abstract

The wide spread of dermatological diseases is an important medical and social problem. Doctors note the constant growth of psoriasis among people of all ages. The psoriasis disease symptoms are similar to the symptoms of such diseases as eczema, atopic dermatitis and medicinal disease. Therefore, there is a high probability of an error in the disease diagnosis, which prevents the full treatment and prevention of the disease. Dermatological diagnostic systems are decision-making support systems for dermatologists when establishing a diagnosis and assessing the severity of the disease course. The development of new image processing methods for dermatological diagnostic systems is an important task, which allow to increase the accuracy of the diagnostic decision. In this work, the segmentation method of psoriasis images for systems of medical dermatological diagnostics based on a vector-difference approach to improve the quality of segmentation was developed. The vector-difference approach allows to calculate a certain texture feature of the image as a vector transformation of various texture features by linear algebra methods. Psoriasis disease images can be described by texture (spectral, statistical, spectral-statistical) and color, so it is proposed to take into account textural and color characteristics of images for image segmentation. The color models that are most often used in segmentation methods of psoriasis disease images were analyzed. Based on the analysis, the Hue-Saturation-Intensity color model was chosen.It is proposed to use spectral, statistical and spectral-statistical texture models and color characteristics of image pixels to represent psoriasis disease images. The developed segmentation method includes the following stages: image pre-processing; identification; vector-difference transformation; threshold processing. At the pre-processing stage, homomorphic filtering was applied to psoriasis disease images. The result of the identification stage is a set of features calculated by the textural and color characteristics for image objects. The vector-difference transformation converts the texture image into intensity. Threshold processing is performed with a global threshold. Experimental research of the proposed segmentation method of psoriasis disease images was performed. As a result of the experimental research, it was found that the probability of correct identification of psoriasis disease area on average is 0.97, the probability of a false alarm is about 0.05.
计算机辅助皮肤诊断系统的纹理分割方法
皮肤病的广泛传播是一个重要的医学和社会问题。医生注意到牛皮癣在各个年龄段的人群中不断增长。银屑病的症状与湿疹、特应性皮炎、药用病等疾病的症状相似。因此,在疾病诊断中出现错误的可能性很大,从而阻碍了对疾病的充分治疗和预防。皮肤科诊断系统是皮肤科医生在建立诊断和评估疾病病程严重程度时的决策支持系统。为皮肤病诊断系统开发新的图像处理方法是一项重要的任务,它可以提高诊断决策的准确性。本文提出了一种基于矢量差分的医学皮肤科诊断系统银屑病图像分割方法,以提高分割质量。矢量差分法允许将图像的某一纹理特征计算为各种纹理特征通过线性代数方法的矢量变换。银屑病图像可以用纹理(光谱、统计、光谱-统计)和颜色来描述,因此提出考虑图像的纹理和颜色特征进行图像分割。分析了银屑病图像分割方法中常用的颜色模型。在分析的基础上,选择了色调-饱和度-强度的颜色模型。提出利用光谱、统计和光谱统计纹理模型以及图像像素的颜色特征来表示银屑病图像。所开发的分割方法包括以下几个阶段:图像预处理;识别;vector-difference转换;阈值处理。在预处理阶段,对银屑病图像进行同态滤波。识别阶段的结果是由图像对象的纹理和颜色特征计算出的一组特征。矢量差分变换将纹理图像转换为强度。阈值处理使用全局阈值执行。对提出的牛皮癣疾病图像分割方法进行了实验研究。实验研究结果发现,银屑病病区的正确识别概率平均为0.97,虚警概率约为0.05。
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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