Skin disease recognition using texture analysis

Md. Nazrul Islam, J. Gallardo-Alvarado, M. Abu, N. A. Salman, S. Rengan, S. Said
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引用次数: 14

Abstract

This research describes skin disease recognition by using neural network which based on the texture analysis. There are many skin diseases which have a lot of similarities in their symptoms, such as Measles (rubeola), German measles (rubella), and Chickenpox etc. In general, these diseases have similarities in pattern of infection and symptoms such as redness and rash. Diagnosis and recognition of skin disease take a very long term process because it requires patient's history, physical examination and proper laboratory diagnostic tests. Not only that, it also requires large number of features clinical as well as histopathological for analysis and to provide further treatment. The disease diagnosis and recognition becomes difficult as the complexity and number of features of the disease increases. Hence, a computer aided diagnosis and recognition system is introduced. Computer algorithm which contains few steps that involves image processing, image feature extraction and classification of data have been implemented with the help of classifier such as artificial neural network (ANN). The ANN can learn patterns of symptoms of particular diseases and provides faster diagnosis and recognition than a human physician. Thus, the patients can do the treatment for the skin disease faced immediately based on the symptoms detected.
基于纹理分析的皮肤病识别
本文研究了基于纹理分析的神经网络对皮肤病的识别。有许多皮肤病在症状上有很多相似之处,如麻疹(风疹)、德国麻疹(风疹)和水痘等。一般来说,这些疾病在感染模式和红肿、皮疹等症状方面有相似之处。皮肤病的诊断和识别需要一个非常长期的过程,因为它需要患者的病史、体格检查和适当的实验室诊断检查。不仅如此,它还需要大量的临床和组织病理学特征来分析和提供进一步的治疗。随着疾病特征的复杂性和数量的增加,疾病的诊断和识别变得越来越困难。为此,介绍了一种计算机辅助诊断与识别系统。在人工神经网络(ANN)等分类器的帮助下,实现了包含图像处理、图像特征提取和数据分类等步骤较少的计算机算法。人工神经网络可以学习特定疾病的症状模式,并提供比人类医生更快的诊断和识别。因此,患者可以根据检测到的症状立即对所面临的皮肤病进行治疗。
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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