An Efficient Algorithm for Plant Disease Detection Using Deep Convolutional Networks

Pratibha Nayar, Shivank Chhibber, Ashwani Kumar Dubey
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引用次数: 5

Abstract

Plant diseases and pests are important factors in determining crop yield and quality. Plant diseases are not only a threat to food security on a global scale but can also have devastating consequences for farmers whose livelihood depend on healthy crops. The detection of plant diseases is of fundamental importance in practical agricultural production. It controls the growth and health of the plant and ensures the regular operation and successful harvest of agricultural plantations. The disease affecting the plants is determined by factors such as the climate. This paper examines an alternative approach to developing a disease detection model supported by leaf classification using deep convolutional networks. Growth in computer vision present a scope to broaden and boost the practice of precision crop protection and expand the market for computer vision applications in precision agriculture, a completely unique form of training and therefore the technique used allows for quick and direct implementation of the system in practice. The database used in this paper consists of 77,000 images of healthy and infected plant leaves. We were able to train a CNN model for classifying plant diseases that is, they are present or not, and then another model was trained with YOLOv7 to detect the disease. The trained classification model achieved an accuracy of 99.5% and the detection model was able to achieve mA$P$, precision, recall of 0.65, 0.59and 0.65 respectively.
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一种基于深度卷积网络的植物病害检测算法
植物病虫害是决定作物产量和品质的重要因素。植物病害不仅对全球范围内的粮食安全构成威胁,而且还可能对依赖健康作物为生的农民造成毁灭性后果。植物病害检测在实际农业生产中具有基础性的重要意义。它控制植物的生长和健康,确保农业种植园的正常运作和成功收获。影响植物的疾病是由气候等因素决定的。本文研究了一种使用深度卷积网络开发由叶子分类支持的疾病检测模型的替代方法。计算机视觉的发展为扩大和促进精确作物保护的实践提供了一个范围,并扩大了计算机视觉在精确农业中的应用市场,这是一种完全独特的培训形式,因此所使用的技术允许在实践中快速和直接地实施系统。本文使用的数据库包括77,000张健康和感染植物叶片的图像。我们能够训练一个CNN模型来分类植物疾病,也就是说,它们是否存在,然后用YOLOv7训练另一个模型来检测疾病。训练后的分类模型准确率达到99.5%,检测模型的mA$P$、精密度和召回率分别达到0.65、0.59和0.65。
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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