Skin Hair Removal for 2D Psoriasis Images

Y. George, M. Aldeen, R. Garnavi
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引用次数: 18

Abstract

Presence of hair in psoriasis skin images may adversely affect the extraction of the features required for computer aided analysis, thus compromise the detection and diagnostic results. Therefore, for the diagnosis of psoriasis to be accurate, it is vitally important to remove hair, if it exists, from images in the preprocessing stage. This paper presents, for the first time, a hair detection and removal algorithm for 2D psoriasis images. The hair removal process starts with a markers removal algorithm, where the shape features are extracted from the binary input image. The outcome of this step is removal of all objects that obscure the image lesions such that the output image contains psoriasis lesions and normal skin only. Next, the dark hair in the skin is identified using contrast enhancement method and morphological operations. Finally, image interpolation is performed to replace the hair pixels with hair free neighbouring pixels values through image inpainting. The proposed algorithm is tested on 64 psoriasis images acquired from the Royal Melbourne Hospital, Victoria, Australia. Experimental results demonstrate that the algorithm is highly accurate and effective. In addition, the widely used hair removal software DullRazor® is used on the same 64 images for comparison. The results show that our proposed algorithm performs quite well and is more adapt to psoriasis images. The method is more effective because it overcomes the problem of removing skin hair without affecting the intensity or texture features of the lesions.
皮肤脱毛的二维牛皮癣图像
牛皮癣皮肤图像中出现毛发可能会对计算机辅助分析所需特征的提取产生不利影响,从而影响检测和诊断结果。因此,为了准确诊断牛皮癣,在预处理阶段将图像中存在的毛发去除是至关重要的。本文首次提出了一种二维牛皮癣图像的毛发检测与去除算法。脱毛过程从标记去除算法开始,从二进制输入图像中提取形状特征。这一步的结果是去除所有遮挡图像病变的物体,使输出图像仅包含牛皮癣病变和正常皮肤。接下来,使用对比度增强方法和形态学操作识别皮肤中的深色毛发。最后,进行图像插值,通过图像补绘将毛发像素替换为相邻无毛发像素值。该算法在澳大利亚维多利亚州皇家墨尔本医院获得的64张牛皮癣图像上进行了测试。实验结果表明,该算法具有较高的精度和有效性。此外,广泛使用的脱毛软件DullRazor®被用于相同的64图像进行比较。结果表明,本文提出的算法具有良好的性能,对牛皮癣图像具有较强的适应性。这种方法更有效,因为它克服了在不影响病变强度或纹理特征的情况下去除皮肤毛发的问题。
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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