Optimization techniques in deep convolutional neuronal networks applied to olive diseases classification

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY Artificial Intelligence in Agriculture Pub Date : 2022-01-01 DOI:10.1016/j.aiia.2022.06.001
El Mehdi Raouhi , Mohamed Lachgar , Hamid Hrimech , Ali Kartit
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引用次数: 17

Abstract

Plants diseases have a detrimental effect on the quality but also on the quantity of agricultural production. However, the prediction of these diseases is proving the effect on crop quality and on reducing the risk of production losses. Indeed, the detection of plant diseases -either with a naked eye or using traditional methods- is largely a cumbersome process in terms of time, availability and results with a high-risk error. The present work introduces a depth study of various CNN architectures with different optimization algorithms carried out for olive disease detection using classification techniques that recommend the best model for constructing an effective disease detector. This study presents a dataset of 5571 olive leaf images collected manually on real conditions from different regions of Morocco, that also includes healthy class to detect olive diseases. Further, one of the goals of this research was to study the correlation effects between CNN architectures and optimization algorithms evaluated by the accuracy and other performance metrics. The highest rate in trained models was 100 %, while the highest rate in experiments without data augmentation was 92,59 %. Another subject of this study is the influence of the optimization algorithms on neuronal network performance. As a result of the experiments carried out, the MobileNet architecture using Rmsprop algorithms outperformed the others combinations in terms of performance and efficiency of disease detector.

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深度卷积神经网络优化技术在橄榄病害分类中的应用
植物病害不仅影响农业生产的质量,而且影响农业生产的数量。然而,对这些病害的预测正在证明对作物品质的影响和对减少生产损失风险的影响。事实上,植物病害的检测——无论是用肉眼还是使用传统方法——在时间、可用性和结果方面基本上是一个繁琐的过程,而且存在高风险的错误。目前的工作介绍了对各种CNN架构的深入研究,这些架构采用不同的优化算法进行橄榄疾病检测,使用分类技术推荐构建有效疾病检测器的最佳模型。本研究展示了在摩洛哥不同地区真实条件下手动收集的5571张橄榄叶图像的数据集,其中还包括用于检测橄榄疾病的健康类。此外,本研究的目标之一是研究CNN架构与通过准确性和其他性能指标评估的优化算法之间的相关效应。经过训练的模型的最高识别率为100%,而未经数据增强的实验的最高识别率为92.59%。本研究的另一个主题是优化算法对神经网络性能的影响。实验结果表明,使用Rmsprop算法的MobileNet架构在疾病检测器的性能和效率方面优于其他组合。
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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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