A deep learning based approach for automated skin disease detection using Fast R-CNN

Prakriti Dwivedi, A. Khan, Amit Gawade, Subodh Deolekar
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引用次数: 3

Abstract

Skin conditions vary widely in terms of its symptoms and criticality which can be persistent or temporary, pain-free or painful, mild or severe and at times situational or genetic in nature. This varying complexity and uncertainty not only make it difficult for a patient to sense it, but also becomes a daunting task for doctors to deal with it. Consequently, if remained ignored or untreated, it can even be fatal at times. Therefore, the need for a rapid detection system for skin disorder is a must to reduce its criticality level. This paper is an attempt to develop a system using deep learning technology to detect skin diseases accurately. Using the Fast R-CNN architecture of deep learning, appropriate annotation technique and proper selection of parameters, the results were obtained. We are able to detect the specified skin disease from the given classes with an overall accuracy of 90% and the loss of 0.3 which shows the effectiveness of the model.
基于深度学习的快速R-CNN自动皮肤病检测方法
皮肤病的症状和严重程度差别很大,可能是持续性的,也可能是暂时性的,可能是无痛的,也可能是疼痛的,可能是轻微的,也可能是严重的,有时是情境性的,也可能是遗传性的。这种不同的复杂性和不确定性不仅使患者难以感知,而且对医生来说,处理它也成为一项艰巨的任务。因此,如果忽视或不治疗,有时甚至可能是致命的。因此,需要一个快速检测系统的皮肤病是必须的,以降低其临界水平。本文尝试开发一个使用深度学习技术来准确检测皮肤疾病的系统。利用深度学习的Fast R-CNN架构,适当的标注技术和参数选择,获得了结果。我们能够从给定的类别中检测到指定的皮肤病,总体准确率为90%,损失为0.3,表明了模型的有效性。
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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