基于多属性深度cnn的药用植物检测方法及其在皮肤病中的应用

Prachi Dalvi;Dhananjay R. Kalbande;Surendra Singh Rathod;Harshal Dalvi;Amey Agarwal
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引用次数: 0

摘要

皮肤健康是人类的一个重大关切,特别是在环境条件和生活方式因素对其状况产生不利影响的地理区域,导致皮肤病的流行。这一问题在农村地区更为严重,如印度部分地区,那里存在着明显的皮肤科医生短缺,导致被忽视的皮肤病。因此,将药用植物用于皮肤病治疗是一个长期的传统。然而,传统的植物鉴定通常依赖于单一的属性,如叶子或花,由于季节变化,这可能不可靠。本文介绍了一种利用多属性深度卷积神经网络准确识别药用植物的新方法。这一方法旨在通过使个人能够有效地认识和利用这些植物,弥合在获得医疗保健方面的差距。我们的目标是开发一个强大的深度CNN模型,该模型训练于与皮肤健康相关的药用植物的叶子、树干和种子的不同图像数据集。研究结果表明,该模型具有较高的植物识别精度,有效地解决了单属性方法的局限性。这项研究不仅有助于药用植物分类领域,而且使个人能够在保留宝贵传统知识的同时,对自己的皮肤健康做出明智的决定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiattribute Deep CNN-Based Approach for Detecting Medicinal Plants and Their Use for Skin Diseases
Skin health is a critical concern for humans, especially in geographical areas where environmental conditions and lifestyle factors adversely affect their condition, leading to a prevalence of skin diseases. This issue is exacerbated in rural regions, like parts of India, where a notable dermatologist shortage exists, leading to overlooked skin diseases. In response, the use of medicinal plants for dermatological purposes has been a longstanding tradition. However, traditional plant identification often relies on a single attribute, such as leaves or flowers, which can be unreliable due to seasonal variations. This article introduces a novel approach for accurately identifying medicinal plants using a multiattribute deep convolutional neural network. This approach aims to bridge the gap in healthcare access by empowering individuals to recognize and utilize these plants effectively. Our objective is to develop a robust deep CNN model trained on a diverse dataset of images encompassing leaves, trunks, and seeds of medicinal plants associated with skin health. Our findings demonstrate that the model achieves high accuracy in plant identification, effectively addressing the limitations of single-attribute methods. This research not only contributes to the field of medicinal plant classification but also empowers individuals to make informed decisions about their skin health while preserving valuable traditional knowledge.
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CiteScore
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