Plant Disease Detection Using CNN

Garima Shrestha, Deepsikha, Majolica Das, Naiwrita Dey
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引用次数: 69

Abstract

Agricultural productivity is a key component of Indian economy. Therefore the contribution of food crops and cash crops is highly important for both the environment and human beings. Every year crops succumb to several diseases. Due to inadequate diagnosis of such diseases and not knowing symptoms of the disease and its treatment many plants die. This study provides insights into an overview of the plant disease detection using different algorithms. A CNN based method for plant disease detection has been proposed here. Simulation study and analysis is done on sample images in terms of time complexity and the area of the infected region. It is done by image processing technique. A total of 15 cases have been fed to the model, out of which 12 cases are of diseased plant leaves namely, Bell Paper Bacterial Spot, Potato Early Blight, Potato Late Blight, Tomato Target Spot, Tomato Mosaic Virus, Tomato Yellow Leaf Curl Virus, Tomato Bacterial Spot, Tomato Early Blight, Tomato Late Blight, Tomato Leaf Mold, Tomato Septoria Leaf Spot and Tomato Spider Mites and 3 cases of healthy leaves namely, Bell Paper Healthy, Potato Healthy and Tomato Healthy. Test accuracy is obtained as 88.80%. Different performance matrices are derived for the same.
利用CNN进行植物病害检测
农业生产力是印度经济的重要组成部分。因此,粮食作物和经济作物的贡献对环境和人类都非常重要。每年庄稼都要患好几种疾病。由于对这些疾病的诊断不充分,不了解疾病的症状和治疗方法,许多植物死亡。本研究提供了使用不同算法的植物病害检测概述的见解。本文提出了一种基于CNN的植物病害检测方法。从时间复杂度和感染区域面积两个方面对样本图像进行了仿真研究和分析。它是通过图像处理技术实现的。模型共接种15例病叶,其中铃纸病斑、马铃薯早疫病、马铃薯晚疫病、番茄靶斑、番茄花叶病毒、番茄黄卷叶病毒、番茄病斑、番茄早疫病、番茄晚疫病、番茄叶霉病、番茄Septoria叶斑病、番茄蜘蛛螨病12例,铃纸病、马铃薯病、番茄病3例。测试精度为88.80%。不同的性能矩阵是相同的。
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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