基于SVM方法的深度学习皮肤病检测

A. K. Moharana, Daxa Vekariya
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引用次数: 0

摘要

皮肤病是世界上最容易预防的疾病之一。虽然它很普遍,但研究它是具有挑战性的,因为颜色、隐藏和头发的存在引入了许多复杂的层次。早期诊断皮肤问题对有效治疗至关重要。识别和治疗皮肤损伤的方法是基于专家的能力和经验水平。在分析中需要精确到极点。由于医学和数据科学的前沿发展,临床诊断和临床治疗框架的成功率正在随着时间的推移而提高。皮肤病诊断得益于人工智能计算的应用以及对医院和诊所大量可用信息的利用。在这项研究中,我们整理了大量以前的研究,这些研究通过基于人工智能的分类策略分析了皮肤疾病。在他们之前的研究中,专家们使用了许多框架、工具和计算方法。已经开发了少数能够以不同程度的提示精度正确识别皮肤病的框架。多个模型采用了图像处理和成分提取的方法
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Detection of Skin Diseases via Deep Learning using SVM Method
Dermatological issues are one of the most preventable diseases in the world. Although it is widespread, studying it is challenging because of the many layers of complexity introduced by the presence of colour, concealment, and hair. Diagnosing skin problems early is essential for effective therapy. The method for identifying and treating skin injury is based on the specialist's level of competence and experience. There needs to be pinpoint accuracy in the analysis. Success rates for clinical diagnostic and clinical therapeutic frameworks are improving with time as a result of cutting-edge developments in medicine and data science. Skin disease diagnosis has benefited from the application of AI calculations and the utilisation of the large quantity of information available in hospitals and clinics. For this study, we collated a large number of previous studies that analysed skin illnesses via the lens of AI-based classification strategies. In their previous studies, the specialists employed numerous frameworks, instruments, and calculations. A small number of frameworks have been developed that are capable of correctly identifying skin diseases with varying degrees of suggestive precision. Multiple models have used image processing and component extraction methods to
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