LeafSpotNet: A deep learning framework for detecting leaf spot disease in jasmine plants

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY Artificial Intelligence in Agriculture Pub Date : 2024-03-11 DOI:10.1016/j.aiia.2024.02.002
Shwetha V, Arnav Bhagwat, Vijaya Laxmi
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引用次数: 0

Abstract

Leaf blight spot disease, caused by bacteria and fungi, poses a threat to plant health, leading to leaf discoloration and diminished agricultural yield. In response, we present a MobileNetV3 based classifier designed for the Jasmine plant, leveraging lightweight Convolutional Neural Networks (CNNs) to accurately identify disease stages. The model integrates depth wise convolution layers and max pool layers for enhanced feature extraction, focusing on crucial low level features indicative of the disease. Through preprocessing techniques, including data augmentation with Conditional GAN and Particle Swarm Optimization for feature selection, the classifier achieves robust performance. Evaluation on curated datasets demonstrates an outstanding 97% training accuracy, highlighting its efficacy. Real world testing with diverse conditions, such as extreme camera angles and varied lighting, attests to the model's resilience, yielding test accuracies between 94% and 96%. The dataset's tailored design for CNN based classification ensures result reliability. Importantly, the model's lightweight classification, marked by fast computation time and reduced size, positions it as an efficient solution for real time applications. This comprehensive approach underscores the proposed classifier's significance in addressing leaf blight spot disease challenges in commercial crops.

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LeafSpotNet:检测茉莉花叶斑病的深度学习框架
由细菌和真菌引起的叶斑病对植物健康构成威胁,导致叶片褪色和农业减产。为此,我们提出了一种基于 MobileNetV3 的分类器,该分类器专为茉莉花植物设计,利用轻量级卷积神经网络 (CNN) 准确识别疾病阶段。该模型集成了深度卷积层和最大池层,用于增强特征提取,重点关注指示疾病的关键低级特征。通过预处理技术,包括使用条件 GAN 和粒子群优化技术进行特征选择的数据增强,分类器实现了稳健的性能。在经过策划的数据集上进行的评估显示,其训练准确率高达 97%,充分体现了其功效。在极端摄像机角度和不同光照等各种条件下进行的实际测试证明了该模型的适应能力,测试准确率在 94% 到 96% 之间。该数据集专为基于 CNN 的分类设计,确保了结果的可靠性。重要的是,该模型的轻量级分类具有计算时间短、体积小的特点,是实时应用的高效解决方案。这种综合方法凸显了所提出的分类器在应对经济作物叶枯病病害挑战方面的重要意义。
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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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