Development of a cutting-edge ensemble pipeline for rapid and accurate diagnosis of plant leaf diseases

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY Artificial Intelligence in Agriculture Pub Date : 2024-11-01 DOI:10.1016/j.aiia.2024.10.005
S.M. Nuruzzaman Nobel , Maharin Afroj , Md Mohsin Kabir , M.F. Mridha
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Abstract

Selecting techniques is a crucial aspect of disease detection analysis, particularly in the convergence of computer vision and agricultural technology. Maintaining crop disease detection in a timely and accurate manner is essential to maintaining global food security. Deep learning is a viable answer to meet this need. To proceed with this study, we have developed and evaluated a disease detection model using a novel ensemble technique. We propose to introduce DenseNetMini, a smaller version of DenseNet. We propose combining DenseNetMini with a learning resizer in ensemble approach to enhance training accuracy and expedite learning. Another unique proposition involves utilizing Gradient Product (GP) as an optimization technique, effectively reducing the training time and improving the model performance. Examining images at different magnifications reveals noteworthy diagnostic agreement and accuracy improvements. Test accuracy rates of 99.65 %, 98.96 %, and 98.11 % are seen in the Plantvillage, Tomato leaf, and Appleleaf9 datasets, respectively. One of the research's main achievements is the significant decrease in processing time, which suggests that using the GP could improve disease detection in agriculture's accessibility and efficiency. Beyond quantitative successes, the study highlights Explainable Artificial Intelligence (XAI) methods, which are essential to improving the disease detection model's interpretability and transparency. XAI enhances the interpretability of the model by visually identifying critical areas on plant leaves for disease identification, which promotes confidence and understanding of the model's functionality.
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开发用于快速准确诊断植物叶片病害的尖端集合管道
选择技术是病害检测分析的一个重要方面,尤其是在计算机视觉与农业技术的融合方面。及时准确地检测作物病害对于维护全球粮食安全至关重要。深度学习是满足这一需求的可行方案。为了开展这项研究,我们利用一种新颖的集合技术开发并评估了一种病害检测模型。我们建议引入 DenseNetMini,它是 DenseNet 的缩小版。我们建议在集合方法中将 DenseNetMini 与学习调整器相结合,以提高训练精度并加快学习速度。另一个独特的主张是利用梯度积(GP)作为优化技术,从而有效缩短训练时间并提高模型性能。对不同放大倍数的图像进行检查后发现,诊断一致性和准确性都有显著提高。Plantvillage 数据集、番茄叶数据集和 Appleleaf9 数据集的测试准确率分别为 99.65%、98.96% 和 98.11%。研究的主要成果之一是显著减少了处理时间,这表明使用 GP 可以提高农业疾病检测的便利性和效率。除了数量上的成功,该研究还强调了可解释人工智能(XAI)方法,这对提高疾病检测模型的可解释性和透明度至关重要。XAI 通过在植物叶片上直观地识别病害识别的关键区域,提高了模型的可解释性,从而增强了对模型功能的信心和理解。
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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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