Hispa Rice Disease Classification using Convolutional Neural Network

Rishabh Sharma, V. Kukreja, Virender Kadyan
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引用次数: 25

Abstract

The current work focuses on implementing a rice disease detection (RDD) system on hispa rice disease by using real-time rice plant images collected from rice fields of Punjab, trained on a CNN-based deep learning model. The dataset first gets preprocessed using a Matlab tool and then splits up into 70 to 30 ratio which further gets trained and validated on a proposed CNN model results in an accuracy of 94%. The motivation behind the proposed work is due to an unavailability of a system for RDD in case of hispa disease gave rise to a need for an efficient and trained system that will be useful for the detection of rice hispa disease.
基于卷积神经网络的稻瘟病分类
目前的工作重点是利用从旁遮普稻田收集的实时水稻植物图像,在基于cnn的深度学习模型上进行训练,实现水稻病害检测(RDD)系统。数据集首先使用Matlab工具进行预处理,然后分成70到30的比例,进一步在提出的CNN模型上进行训练和验证,结果精度为94%。提出这项工作的动机是由于没有一种针对稻瘟病的RDD系统,因此需要一种有效和训练有素的系统来检测稻瘟病。
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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