Klasifikasi Penyakit Antraknosa Pada Cabai Merah Teropong ”Inko Hot” Dengan Metode Convolutional Neural Network

Donny Avianto, Ilmy Eka Handayani
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Abstract

The red chili variety "inko hot" is a type of red chili that has a high economic value. Unfortunately, these red chili plants are often infected with anthracnose disease, which results in significant losses for farmers. Anthracnose is one of the major diseases infecting chili plants, potentially resulting in crop failure and losses of up to 80%. The purpose of this study is to develop a classification system to identify anthracnose disease in red chili fruit, using Convolutional Neural Network (CNN) method. In this experiment, 1500 data were used, of which 80% were used as training data and 20% as validation data. The best results of this experiment produced a model with an accuracy of 97% and a loss rate of 6.45%, by applying the Nadam optimization algorithm and going through 50 iterations (epochs). The model showed good performance with a prediction accuracy rate of 83.33%. The development of this classification system has significant potential in providing efficient solutions to recognize diseases in chili plants. Through continuous development, this system can be a valuable tool for farmers to increase crop productivity and reduce the negative impact of disease attacks on red chili peppers and other crops.
红灯区炭疽热对“热仁科”望远镜的分类与神经对焦网络
红辣椒品种“印辣”是一种具有很高经济价值的红辣椒。不幸的是,这些红辣椒植物经常感染炭疽病,这给农民造成了重大损失。炭疽病是影响辣椒植物的主要疾病之一,可能导致作物歉收和高达80%的损失。本研究的目的是利用卷积神经网络(CNN)方法建立红辣椒果实炭疽病的分类系统。本实验共使用了1500个数据,其中80%作为训练数据,20%作为验证数据。本实验采用那达姆优化算法,经过50次迭代(epoch),得到的最佳模型准确率为97%,损失率为6.45%。该模型具有良好的预测效果,预测准确率为83.33%。该分类系统的建立为辣椒病害识别提供了有效的解决方案。通过不断发展,该系统可以成为农民提高作物生产力和减少病害对红辣椒和其他作物的负面影响的宝贵工具。
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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