A big data driven vegetation disease and pest region identification method based on self supervised convolutional neural networks and parallel extreme learning machines

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-02-13 DOI:10.1016/j.bdr.2024.100444
Bo Jiang , Hao Wang , Hanxu Ma
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Abstract

A self supervised convolutional neural network-parallel extreme learning machine classification model based on big data is proposed to address the subjectivity and inaccuracy of traditional methods for identifying vegetation pests and diseases that rely on manual observation and empirical judgment. This model is constructed using convolutional neural networks and parallel extreme learning machines, and integrates feature extraction networks with dual attention mechanisms to improve the accuracy of identifying pests and diseases. The model utilized a large amount of big data for training, achieving a recall rate of 98.42 % on multispectral datasets, and an overall classification accuracy of 99.04 %. After optimizing the residual network, the overall accuracy of identifying vegetation pest and disease areas has been further improved to 99.77 %, and the recall rate has also reached 98.91 %. These results indicate that the method proposed in this study has high accuracy and efficiency in the application of big data, can meet the needs of disease and pest identification, and provides effective technical support for the monitoring and prevention of crop diseases and pests, which has important practical significance.

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基于自监督卷积神经网络和并行极限学习机的大数据驱动型植被病虫害区域识别方法
针对传统植被病虫害识别方法依赖人工观察和经验判断的主观性和不准确性,提出了一种基于大数据的自监督卷积神经网络-并行极端学习机分类模型。该模型采用卷积神经网络和并行极端学习机构建,将特征提取网络与双重关注机制相结合,提高了识别病虫害的准确性。该模型利用大量大数据进行训练,在多光谱数据集上的召回率达到 98.42%,整体分类准确率达到 99.04%。在优化残差网络后,植被病虫害区域识别的总体准确率进一步提高到 99.77 %,召回率也达到了 98.91 %。这些结果表明,本研究提出的方法在大数据应用中具有较高的准确率和效率,能够满足病虫害识别的需要,为农作物病虫害的监测和防治提供了有效的技术支撑,具有重要的现实意义。
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CiteScore
7.20
自引率
4.30%
发文量
567
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