人工智能驱动边缘设备筛选周边社区皮肤病变及其严重程度

Chathura.N. Jaikishore, Venkanna Udutalapally, Debanjan Das
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引用次数: 1

摘要

尽早治疗任何皮肤病都是至关重要的。忽视初级皮肤病可能导致急性皮肤癌。由于皮肤科医生缺乏认识和可及性,皮肤病在周边地区大多被忽视。因此,及时诊断皮肤病并采取有效的治疗措施十分重要。本文提出了一种利用移动应用程序检测皮肤病及其严重程度的新方法。数据集包括四类-湿疹、麻疹、麻风病和健康正常皮肤。图像通过两个改进的CNN架构传递。第一层是一个改进的移动网络V2架构,它有助于预测皮肤疾病的类型,这被称为皮肤病变网络。预测疾病严重程度的下一层被命名为SeverityNet。使用该图像数据集对四种不同的CNN架构(VGGl6,Inception V3, Xception和所提出的skin病变网)进行了观察比较。Skin病变网的准确率为94.32%,F1-Score为93.02%,准确率为93.53%,召回率为92.76%,优于其他网络。该模型是轻量级的,大小约为14 MB,适合部署到Android应用程序中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI Driven Edge Device for Screening Skin Lesion and Its Severity in Peripheral Communities
It is vital to treat any skin disorder as early as possible. Neglecting the rudimentary skin disease may lead to acute skin cancer. Skin diseases are mostly neglected in peripheral regions because of a lack of awareness and accessibility to dermatologists. Therefore, it is important to diagnose skin diseases promptly and take countermeasures to treat them effectively. The paper presents a novel method to detect skin disease and its severity using a mobile application. A dataset consisting of four classes- Eczema, Measles, Leprosy, and Healthy Normal Skin is chosen in this proposed work. The images are passed through two modified CNN architectures. The first layer is a modified Mobile Net V2 architecture that aids in predicting the type of skin disease, which is referred to as SkinLesion Net. The next layer that predicts the severity of the disease is named SeverityNet. Observant comparison on four different CNN architectures - VGGl6,Inception V3, Xception and the proposed SkinLesion Net, is performed using this image dataset. Skin Lesion Net outperforms the other networks with 94.32% accuracy, 93.02% F1-Score, 93.53% Precision and 92.76% Recall. The model is lightweight, about 14 MB in size, which is appropriate for deployment into an Android application.
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