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一种在人工智能驱动的智能农业中使用图像分析进行棉花作物分类的集成深度学习模型方法。

An ensemble deep learning models approach using image analysis for cotton crop classification in AI-enabled smart agriculture.

作者信息

Shahid Muhammad Farrukh, Khanzada Tariq J S, Aslam Muhammad Ahtisham, Hussain Shehroz, Baowidan Souad Ahmad, Ashari Rehab Bahaaddin

机构信息

FAST School of Computing, National University of Computer & Emerging Sciences, Karachi, 75030, Pakistan.

Department of Information Systems, Faculty of Computing and Information Technology, King Abdulaziz University, Jeddah, 21589, Saudi Arabia.

出版信息

Plant Methods. 2024 Jul 14;20(1):104. doi: 10.1186/s13007-024-01228-w.

Abstract

BACKGROUND

Agriculture is one of the most crucial assets of any country, as it brings prosperity by alleviating poverty, food shortages, unemployment, and economic instability. The entire process of agriculture comprises many sectors, such as crop cultivation, water irrigation, the supply chain, and many more. During the cultivation process, the plant is exposed to many challenges, among which pesticide attacks and disease in the plant are the main threats. Diseases affect yield production, which affects the country's economy. Over the past decade, there have been significant advancements in agriculture; nevertheless, a substantial portion of crop yields continues to be compromised by diseases and pests. Early detection and prevention are crucial for successful crop management.

METHODS

To address this, we propose a framework that utilizes state-of-the-art computer vision (CV) and artificial intelligence (AI) techniques, specifically deep learning (DL), for detecting healthy and unhealthy cotton plants. Our approach combines DL with feature extraction methods such as continuous wavelet transform (CWT) and fast Fourier transform (FFT). The detection process involved employing pre-trained models such as AlexNet, GoogLeNet, InceptionV3, and VGG-19. Implemented models performance was analysed based on metrics such as accuracy, precision, recall, F1-Score, and Confusion matrices. Moreover, the proposed framework employed ensemble learning framework which uses averaging method to fuse the classification score of individual DL model, thereby improving the overall classification accuracy.

RESULTS

During the training process, the framework achieved better performance when features extracted from CWT were used as inputs to the DL model compared to features extracted from FFT. Among the learning models, GoogleNet obtained a remarkable accuracy of 93.4% and a notable F1-score of 0.953 when trained on features extracted by CWT in comparison to FFT-extracted features. It was closely followed by AlexNet and InceptionV3 with an accuracy of 93.4% and 91.8% respectively. To further improve the classification accuracy, ensemble learning framework achieved 98.4% on the features extracted from CWT as compared to feature extracted from FFT.

CONCLUSION

The results show that the features extracted as scalograms more accurately detect each plant condition using DL models, facilitating the early detection of diseases in cotton plants. This early detection leads to better yield and profit which positively affects the economy.

摘要

背景

农业是任何国家最重要的资产之一,因为它通过减轻贫困、粮食短缺、失业和经济不稳定带来繁荣。农业的整个过程包括许多部门,如作物种植、灌溉、供应链等等。在种植过程中,植物面临许多挑战,其中农药侵害和植物病害是主要威胁。病害会影响产量,进而影响国家经济。在过去十年里,农业取得了重大进展;然而,很大一部分作物产量仍然受到病虫害的影响。早期检测和预防对于成功的作物管理至关重要。

方法

为了解决这个问题,我们提出了一个框架,该框架利用先进的计算机视觉(CV)和人工智能(AI)技术,特别是深度学习(DL),来检测健康和不健康的棉花植株。我们的方法将深度学习与连续小波变换(CWT)和快速傅里叶变换(FFT)等特征提取方法相结合。检测过程涉及使用预训练模型,如AlexNet、GoogLeNet、InceptionV3和VGG-19。基于准确率、精确率、召回率、F1分数和混淆矩阵等指标对实现的模型性能进行分析。此外,所提出的框架采用了集成学习框架,该框架使用平均方法融合单个深度学习模型的分类分数,从而提高整体分类准确率。

结果

在训练过程中,与从快速傅里叶变换提取的特征相比,当将从连续小波变换提取的特征用作深度学习模型的输入时,该框架表现出更好的性能。在学习模型中,与从快速傅里叶变换提取的特征相比,当使用从连续小波变换提取的特征进行训练时,GoogLeNet获得了93.4%的显著准确率和0.953的显著F1分数。紧随其后的是AlexNet和InceptionV3,准确率分别为93.4%和91.8%。为了进一步提高分类准确率,集成学习框架在从连续小波变换提取的特征上达到了98.4%,而在从快速傅里叶变换提取的特征上为98.4%。

结论

结果表明,作为尺度图提取的特征使用深度学习模型能更准确地检测每种植物状况,有助于棉花植株病害的早期检测。这种早期检测能带来更好的产量和利润,对经济产生积极影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6894/11246586/175898c35363/13007_2024_1228_Fig1_HTML.jpg

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