国际计算系统及其应用会议(ICCSA - 2021)

U Sanath Rao , R Swathi , V Sanjana , L Arpitha , K Chandrasekhar , Chinmayi , Pramod Kumar Naik
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引用次数: 22

摘要

在印度,一半的人口以农业为生。微生物疾病是对粮食安全的重大威胁,但由于基础设施有限,它们的快速识别仍然很困难。有了人工智能,利用深度学习和迁移学习,从原始图像中自动检测植物病害成为可能。本文旨在对葡萄和芒果叶片病害进行检测和分类,使用从植物村数据集收集并在当地获取的8,438张患病和健康叶片图像数据集。深度卷积神经网络(CNN)被训练来识别疾病或疾病的缺失。一个被称为AlexNet的预训练CNN架构被建模用于自动特征提取和分类。利用MATLAB开发的系统对葡萄叶和芒果叶的检测准确率分别达到99%和89%。一款名为“JIT CROPFIX”的应用程序在Android智能手机上实现了同样的功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Precision Farming: Grapes and Mango Leaf Disease Detection by Transfer Learning

In India, half the population depends on agriculture for a livelihood. Microbial diseases are a significant threat to food security, but their rapid identification remains difficult due to limited infrastructure. With AI, automatic detection of plant diseases from raw images is possible using deep learning and transfer learning. This paper aims to detect and classify Grapes and Mango leaf diseases, employing a dataset of 8,438 images of diseased and healthy leaves collected from the Plant Village dataset and acquired locally. The deep convolutional neural network (CNN) is trained to identify diseases or their absence. A pre-trained CNN architecture called AlexNet is modeled for automatic feature extraction and classification. The system is developed with MATLAB achieves an accuracy rate of the detection of 99% and 89% for Grape leaves and Mango leaves respectively. An app named "JIT CROPFIX" is developed to implement the same on an Android Smartphone.

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