Various Approaches in Plant Species Identification and Plant Disease Detection Using Digital Images of Leaves

Annie Augustine, K. Sherly
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Abstract

Plants and trees are an inevitable part of our life. All these species contribute to biodiversity, provide clean and fresh air, prevent soil erosion, home remedy, and many more. Acquiring knowledge about species is essential for protecting biodiversity. The identification of plants by conventional methods is complex and time-consuming for novices. Also, many species are endangered because of human encroachment and due to diseases affecting plants. These plant diseases cause economic, social, and ecological losses. In this context, diagnosing diseases accurately and timely and doing the necessary control measures is of the utmost importance. There have been many technological advancements in the area of computer vision to identify plant species and diseases automatically. This paper aims to present various approaches in leaf recognition and disease detection using digital images of leaves. Various phases in image classification using conventional machine learning models and deep learning techniques have been discussed. A comparative study on various paper works and their performance have also been analyzed.
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利用叶片数字图像进行植物物种鉴定和病害检测的各种方法
植物和树木是我们生活中不可避免的一部分。所有这些物种都有助于生物多样性,提供清洁新鲜的空气,防止土壤侵蚀,家庭补救措施等等。获取有关物种的知识对保护生物多样性至关重要。对新手来说,用常规方法鉴定植物既复杂又费时。此外,由于人类的入侵和植物疾病的影响,许多物种濒临灭绝。这些植物病害造成经济、社会和生态损失。在这种情况下,准确及时地诊断疾病并采取必要的控制措施是至关重要的。计算机视觉在自动识别植物种类和病害方面取得了许多技术进步。本文旨在介绍利用叶片数字图像进行叶片识别和病害检测的各种方法。讨论了使用传统机器学习模型和深度学习技术进行图像分类的各个阶段。并对各种纸制品及其性能进行了比较研究。
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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