Skin Disease Classification from Image - A Survey

Tanvi Goswami, V. Dabhi, H. Prajapati
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引用次数: 16

Abstract

Skin diseases are one of the most common types of health illnesses faced by the people for ages. The identification of skin disease mostly relies on the expertise of the doctors and skin biopsy results, which is a time-consuming process. An automated computer-based system for skin disease identification and classification through images is needed to improve the diagnostic accuracy as well as to handle the scarcity of human experts. Classification of skin disease from an image is a crucial task and highly depends on the features of the diseases considered in order to classify it correctly. Many skin diseases have highly similar visual characteristics, which add more challenges to the selection of useful features from the image. The accurate analysis of such diseases from the image would improve the diagnosis, accelerates the diagnostic time and leads to better and cost-effective treatment for patients. This paper presents the survey of different methods and techniques for skin disease classification namely; traditional or handcrafted feature-based as well as deep learning-based techniques.
皮肤病图像分类综述
皮肤病是人们长期面临的最常见的健康疾病之一。皮肤病的鉴定主要依靠医生的专业知识和皮肤活检结果,这是一个耗时的过程。需要一种基于计算机的自动系统,通过图像进行皮肤病识别和分类,以提高诊断准确性,并解决人类专家的稀缺问题。从图像中对皮肤病进行分类是一项至关重要的任务,它高度依赖于所考虑的疾病的特征,以便正确分类。许多皮肤病具有高度相似的视觉特征,这给从图像中选择有用的特征增加了更多的挑战。从图像中准确分析这些疾病将提高诊断,加快诊断时间,并为患者带来更好和更具成本效益的治疗。本文综述了皮肤病分类的不同方法和技术;传统的或手工制作的基于特征的技术以及基于深度学习的技术。
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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