Skin Diseases Classification Using Local Binary Pattern and Convolutional Neural Network

N. Akmalia, P. Sihombing, Suherman
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引用次数: 6

Abstract

Skin disease is one of the diseases that are often found in tropical countries like Indonesia. Lack of knowledge about the types and prevention of skin diseases results a person suffering from acute skin diseases. Computer technology is expected to help detect disease early so that it can minimize the occurrence of more dangerous diseases. This paper proposes a method for introducing the shape, color, and texture of skin diseases in digital images and classifying the results of image analysis based on the type of disease in human skin. The method used is a combination of Local Binary Pattern (LBP) and Convolutional Neural Network (CNN) methods which can later be used as sensors or vision for skin diseases automatically. The results of this study can help in the early identification of skin diseases, helping parties who want to know the image value of skin diseases by using LBP and classifying it based on the type of disease using CNN. This study shows the level of accuracy of combining LBP with CNN is quite high with an average value of 92%. In addition, this research can also be used as reference material for the development of further research in image processing that uses LBP and classification using CNN.
基于局部二值模式和卷积神经网络的皮肤病分类
皮肤病是印度尼西亚等热带国家常见的疾病之一。缺乏对皮肤病类型和预防的知识导致人们患上急性皮肤病。计算机技术有望帮助及早发现疾病,从而将更危险的疾病的发生降到最低。本文提出了一种在数字图像中引入皮肤疾病的形状、颜色和纹理,并根据人体皮肤疾病类型对图像分析结果进行分类的方法。使用的方法是局部二值模式(LBP)和卷积神经网络(CNN)方法的结合,以后可以自动用作皮肤疾病的传感器或视觉。本研究的结果有助于皮肤病的早期识别,帮助想要通过LBP了解皮肤病的图像价值的各方,并根据疾病的类型使用CNN进行分类。本研究表明,LBP与CNN相结合的准确率水平相当高,平均达到92%。此外,本研究也可以作为进一步研究使用LBP的图像处理和使用CNN的分类的参考资料。
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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