Diagnosis of skin diseases using Convolutional Neural Networks

Jainesh Rathod, Vishal Wazhmode, Aniruddh Sodha, Praseniit Bhavathankar
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引用次数: 66

Abstract

Dermatology is one of the most unpredictable and difficult terrains to diagnose due its complexity. In the field of dermatology, many a times extensive tests are to be carried out so as to decide upon the skin condition the patient may be facing. The time may vary from practitioner to practitioner. This is also based on the experience of that person too. So, there is a need of a system which can diagnose the skin diseases without any of these constraints. We propose an automated image based system for recognition of skin diseases using machine learning classification. This system will utilize computational technique to analyze, process, and relegate the image data predicated on various features of the images. Skin images are filtered to remove unwanted noise and also process it for enhancement of the image. Feature extraction using complex techniques such as Convolutional Neural Network (CNN), classify the image based on the algorithm of softmax classifier and obtain the diagnosis report as an output. This system will give more accuracy and will generate results faster than the traditional method, making this application an efficient and dependable system for dermatological disease detection. Furthermore, this can also be used as a reliable real time teaching tool for medical students in the dermatology stream.
使用卷积神经网络诊断皮肤病
皮肤科是最难以预测和难以诊断的领域之一,因为它的复杂性。在皮肤病学领域,很多时候要进行广泛的测试,以确定患者可能面临的皮肤状况。时间可能因从业者而异。这也是基于那个人的经历。因此,我们需要一种系统来诊断皮肤疾病,而不受这些限制。我们提出了一种基于自动图像的系统,用于使用机器学习分类识别皮肤疾病。该系统将利用计算技术对基于图像各种特征的图像数据进行分析、处理和降级。对皮肤图像进行过滤以去除不需要的噪声,并对其进行处理以增强图像。使用卷积神经网络(CNN)等复杂技术进行特征提取,基于softmax分类器算法对图像进行分类,并获得诊断报告作为输出。该系统将提供更高的准确性,并将比传统方法更快地产生结果,使该应用程序成为一种高效可靠的皮肤病检测系统。此外,这也可以作为一个可靠的实时教学工具,为医学生在皮肤科流。
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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