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Psoriatic plaque segmentation in skin images

机译:皮肤图像中的银屑病斑块分割

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This paper concerns about automatic psoriatic plaque segmentation in skin images. A novel pixel clustering based image segmentation approach is proposed. The clustering approach works with the circular-linear color spaces which remained unexplored because of the unavailability of appropriate mixture models and hence, the traditional clustering algorithms are incapable of handling such color spaces. This paper makes use of a novel Semi-Wrapped Gaussian Mixture Model (SWGMM) based approach for clustering image pixels. The experiment considers CIE Lch color space which is essentially a circular-linear space. The performance of SWGMM-based segmentation is compared to commonly used Fuzzy C-Means(FCM) and Fuzzy Kernel C-Means (FKCM)-based segmentation methods in linear color space. Results on a newly generated dataset show that SWGMM-based segmentation achieves accuracy of 82.84% in CIE Lch; whereas experiments with three linear color spaces namely, RGB, CIE L*u*v* and CIE L*a*b* show that FKCM and FCM achieve best accuracies of 78.80% and 77.79%, respectively in Lu*v* space. For comparing the clustering-based diseased detection result to a supervised pixel classification based approach, a support vector machines (SVM) based classifier is trained with labelled diseased and normal healthy skin pixels. As the number of images is limited for the present problem, SVM based diseased detection achieves 63.56% accuracy which is significantly lower than the accuracies given by the clustering based approaches.
机译:本文关注皮肤图像中的自动银屑病斑块分割。提出了一种新颖的基于像素聚类的图像分割方法。由于没有合适的混合模型,因此聚类方法适用于尚未探索的圆形线性色彩空间,因此,传统的聚类算法无法处理此类色彩空间。本文利用一种新颖的基于半包裹式高斯混合模型(SWGMM)的方法对图像像素进行聚类。实验考虑了CIE Lch颜色空间,该颜色空间本质上是一个圆线性空间。在线性色彩空间中,将基于SWGMM的分割性能与常用的基于模糊C均值(FCM)和基于模糊核C均值(FKCM)的分割方法进行了比较。在新生成的数据集上的结果表明,基于SWGMM的分割在CIE Lch中达到了82.84%的准确度;而使用RGB,CIE L * u * v *和CIE L * a * b *三种线性色彩空间进行的实验表明,FKCM和FCM在Lu * v *空间中分别达到78.80%和77.79%的最佳精度。为了将基于聚类的疾病检测结果与基于监督像素分类的方法进行比较,使用标记的疾病和正常健康皮肤像素训练了基于支持向量机(SVM)的分类器。由于当前问题的图像数量有限,因此基于SVM的病态检测可达到63.56%的准确度,该准确度明显低于基于聚类方法的准确度。

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