基于学习字典和归一化图割的黑色素细胞皮肤损伤分割

E. S. Flores, J. Scharcanski
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引用次数: 15

摘要

色素黑素细胞性皮肤病变的预筛选依赖于对受皮肤病变影响的图像区域进行适当的分割。提出了一种针对标准相机图像的黑色素细胞皮肤病灶分割算法。假设每个输入图像中只有一个皮肤病变,并且假设皮肤病变位于(或接近)图像中心。因此,输入首先是减弱阴影,然后转换为三通道颜色空间,增强健康和不健康皮肤区域之间的区分。然后,为每张图像生成一个字典,该字典具有紧凑性和重构性,表示图像的patch。该词典是使用信息理论字典学习(ITDL)方法的改进版本以无监督的方式获得的,该方法最初被提出为监督字典学习方法。规范化图形切割用于将投影补丁集划分为两组,从而产生一个二值掩码,该掩码将像素标记为对应于健康或不健康的图像区域。我们在公开数据集上获得的初步实验结果令人鼓舞,并表明所提出的色素黑素细胞皮肤病变分割方法平均比文献中提出的同类最先进方法提供更低的分割错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of Pigmented Melanocytic Skin Lesions Based on Learned Dictionaries and Normalized Graph Cuts
Pigmented melanocytic skin lesion pre-screening relies on the proper segmentation of the image regions affected by the skin lesion. This paper proposes a new pigmented melanocytic skin lesion segmentation algorithm for standard camera images. It is assumed that only one skin lesion is in each input image, and also is assumed that the skin lesion is placed at (or close to) the image center. Thus, the input is, at first, shading attenuated, and then converted to a three-channel color space that enhances the discrimination between healthy and unhealthy skin regions. Afterwards, a dictionary is generated for each image, which is compact and reconstructive, and represents the image patches. This dictionary is obtained in an unsupervised manner using a modified version of the Information-Theoretic Dictionary Learning (ITDL) method, which was originally proposed as supervised dictionary learning method. Normalized Graph Cuts is used to partition the set of projected patches in two groups, resulting in a binary mask that labels the pixels as corresponding to healthy or unhealthy image regions. Our preliminary experimental results obtained on a publicly available dataset are encouraging, and suggest that the proposed pigmented melanocytic skin lesion segmentation method provides, in average, a lower segmentation error rate than comparable state-of-the-art methods proposed in the literature.
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