Handling Uncertainty with Fuzzy Lesion Segmentation Improves the Classification Accuracy of Skin Diseases using Deep Convolutional Networks

Dasari Anantha Reddy, Swarup Roy, R. Tripathi, Sanjay Kumar, Abhishek De, Sourav Dutta
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引用次数: 2

Abstract

Often skin disease classification models suffer from confusion due to similar lesion regions with background skin. It has been observed that disease lesions are sometimes non-distinguishable due to similar structure and texture with skin, which leads to misclassification. Segmentation of lesions may help to improve the accuracy of prediction by extracting the region of interest. However, exclusive clustering-based segmentation methods limited handling uncertainty in the lesion regions. Fuzzy clustering methods are built to handle such uncertain homogeneous regions.In this work, we employ Fuzzy C-Means (FCM) segmentation to extract lesion from the diseased skin images. Segmented images are then fed into Deep Convolutional Neural Network (DCNN) for skin disease classification. The comparative analysis over the traditional segmentation techniques demonstrates that the FCM segmentation enhances the performance of DCNN in classifying skin diseases with improved accuracy.
利用模糊病灶分割处理不确定性,提高了深度卷积网络对皮肤病的分类精度
由于病变区域与背景皮肤相似,皮肤病的分类模型常常会出现混淆。据观察,疾病病变有时由于与皮肤的结构和质地相似而无法区分,从而导致错误分类。病灶的分割可以通过提取感兴趣的区域来提高预测的准确性。然而,基于排他聚类的分割方法限制了对病变区域不确定性的处理。建立了模糊聚类方法来处理这种不确定的均匀区域。在这项工作中,我们采用模糊c均值(FCM)分割从病变皮肤图像中提取病变。然后将分割后的图像输入深度卷积神经网络(DCNN)进行皮肤病分类。与传统分割技术的对比分析表明,FCM分割提高了DCNN对皮肤病的分类精度。
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