利用深度学习算法对健康的可可豆荚进行分类

Rey Anthony G. Godmalin, Chris Jordan G. Aliac, L. Feliscuzo
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引用次数: 1

摘要

可可种植是一个全球性的产业,也是一些企业的重要资源。但它经常受到疾病和害虫的威胁,这可能给可可种植者造成重大损失。利用人工智能和深度学习算法,对这些攻击进行自动识别可以帮助农民立即做出反应,控制这一事件。本文采用深度学习算法解决可可荚状态的自动分类问题。采用实验研究设计方法,使用卷积神经网络进行训练。该模型可以对给定的可可荚图像进行三种情况的分类:健康、黑荚病和虫害。在控制条件下,该模型正确分类可可豆荚状况,准确率为94,因此,使用训练好的轻量级模型,可以准确和自动化分类可可豆荚状况。建议进一步研究将其与硬件监测/监视设备相结合,在实际田间对可可豆荚状况进行实时分类。有了这一点,它就可以支持快速和即时的响应,减轻生产损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Cacao Pod if Healthy or Attack by Pest or Black Pod Disease Using Deep Learning Algorithm
Cacao farming is a worldwide industry and a vital resource for some businesses. But it is constantly threatened by diseases and pest attacks that can cause significant loss to cacao farmers. Using Artificial Intelligence and Deep Learning Algorithm, an automated recognition of these attacks can help the farmers respond immediately to control this event. This paper used Deep Learning Algorithm to address the automatic classification of a cacao pod condition. An experimental research design method is utilized, and a convolutional neural network is used for training. The model can classify three conditions of a given cacao pod image: healthy, black pod disease attack, and pest attack. Under controlled conditions, the model correctly classifies the cacao pod condition with an accuracy of 94 Thus, using the trained lightweight model, it is possible to accurately and automate the classification of cacao pod conditions. Further study is recommended to integrate it with hardware monitoring/surveillance devices to perform real-time classification of the cacao pod condition on the actual field. With this in place, it can then support fast and immediate responses mitigating the loss of production.
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