Hybrid Adaptive Multiple Intelligence System (HybridAMIS) for classifying cannabis leaf diseases using deep learning ensembles

IF 6.3 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2024-08-11 DOI:10.1016/j.atech.2024.100535
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Abstract

Optimizing cannabis crop yield and quality necessitates accurate, automated leaf disease classi-fication systems for timely detection and intervention. Existing automated solutions, however, are insufficiently tailored to the specific challenges of cannabis disease identification, struggling with robustness across varied environmental conditions and plant growth stages. This paper introduces a novel Hybrid Adaptive Multi-Intelligence System for Deep Learning Ensembles (HyAMIS-DLE), utilizing a comprehensive dataset reflective of the diversity in cannabis leaf diseases and their progression. Our approach combines non-population-based decision fusion in image prepro-cessing with population-based decision fusion in classification, employing multiple CNN archi-tectures. This integration facilitates a significant improvement in performance metrics: Hy-AMIS-DLE achieves an accuracy of 99.58 %, outperforming conventional models by up to 4.16 %, and exhibits superior robustness and an enhanced Area Under the Curve (AUC) score, effectively distinguishing between healthy and diseased leaves. The successful deployment of HyAMIS-DLE within our Automated Cannabis Leaf Disease Classification System (A-CLDC-S) demonstrates its practical value, contributing to increased crop yields, reduced losses, and the promotion of sus-tainable agricultural practices.

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利用深度学习集合对大麻叶片病害进行分类的混合自适应多元智能系统(HybridAMIS)
要优化大麻作物的产量和质量,就必须有准确的自动叶片病害分类系统,以便及时发现和干预。然而,现有的自动化解决方案不足以应对大麻病害识别的具体挑战,在不同的环境条件和植物生长阶段都难以保持稳定。本文介绍了一种新颖的深度学习集合混合自适应多智能系统(HyAMIS-DLE),它利用了一个反映大麻叶片疾病多样性及其发展过程的综合数据集。我们的方法采用多个 CNN 架构,将图像预处理中的非群体决策融合与分类中的群体决策融合相结合。这种融合大大提高了性能指标:Hy-AMIS-DLE 的准确率达到 99.58%,比传统模型高出 4.16%,并表现出卓越的鲁棒性和更高的曲线下面积(AUC)得分,能有效区分健康叶片和病叶。HyAMIS-DLE 在我们的自动大麻叶病分类系统 (A-CLDC-S) 中的成功应用证明了它的实用价值,有助于提高作物产量、减少损失和推广可实现的农业实践。
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