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基于迁移学习的植物病害分类与检测在可持续农业中的应用。

Using transfer learning-based plant disease classification and detection for sustainable agriculture.

机构信息

School of Digital Science, Universiti Brunei Darussalam, Tungku Link, Gadong, BE1410, Brunei.

出版信息

BMC Plant Biol. 2024 Feb 26;24(1):136. doi: 10.1186/s12870-024-04825-y.

Abstract

Subsistence farmers and global food security depend on sufficient food production, which aligns with the UN's "Zero Hunger," "Climate Action," and "Responsible Consumption and Production" sustainable development goals. In addition to already available methods for early disease detection and classification facing overfitting and fine feature extraction complexities during the training process, how early signs of green attacks can be identified or classified remains uncertain. Most pests and disease symptoms are seen in plant leaves and fruits, yet their diagnosis by experts in the laboratory is expensive, tedious, labor-intensive, and time-consuming. Notably, how plant pests and diseases can be appropriately detected and timely prevented is a hotspot paradigm in smart, sustainable agriculture remains unknown. In recent years, deep transfer learning has demonstrated tremendous advances in the recognition accuracy of object detection and image classification systems since these frameworks utilize previously acquired knowledge to solve similar problems more effectively and quickly. Therefore, in this research, we introduce two plant disease detection (PDDNet) models of early fusion (AE) and the lead voting ensemble (LVE) integrated with nine pre-trained convolutional neural networks (CNNs) and fine-tuned by deep feature extraction for efficient plant disease identification and classification. The experiments were carried out on 15 classes of the popular PlantVillage dataset, which has 54,305 image samples of different plant disease species in 38 categories. Hyperparameter fine-tuning was done with popular pre-trained models, including DenseNet201, ResNet101, ResNet50, GoogleNet, AlexNet, ResNet18, EfficientNetB7, NASNetMobile, and ConvNeXtSmall. We test these CNNs on the stated plant disease detection and classification problem, both independently and as part of an ensemble. In the final phase, a logistic regression (LR) classifier is utilized to determine the performance of various CNN model combinations. A comparative analysis was also performed on classifiers, deep learning, the proposed model, and similar state-of-the-art studies. The experiments demonstrated that PDDNet-AE and PDDNet-LVE achieved 96.74% and 97.79%, respectively, compared to current CNNs when tested on several plant diseases, depicting its exceptional robustness and generalization capabilities and mitigating current concerns in plant disease detection and classification.

摘要

自给农民和全球粮食安全依赖于充足的粮食生产,这与联合国的“零饥饿”、“气候行动”和“负责任的消费和生产”可持续发展目标相一致。除了已经存在的早期疾病检测和分类方法外,在训练过程中还面临着过拟合和精细特征提取的复杂性,如何识别或分类早期的绿色攻击迹象仍然不确定。大多数害虫和疾病症状都出现在植物的叶子和果实上,但专家在实验室进行诊断既昂贵、繁琐、劳动密集,又耗时。值得注意的是,如何适当检测和及时预防植物病虫害仍然是智能、可持续农业中的一个热点范式。近年来,深度迁移学习在物体检测和图像分类系统的识别精度方面取得了巨大进展,因为这些框架利用先前获得的知识来更有效地和快速地解决类似问题。因此,在这项研究中,我们引入了两种植物病害检测(PDDNet)模型,即早期融合(AE)和领先投票集成(LVE),并集成了九个预先训练的卷积神经网络(CNN),通过深度特征提取进行微调,以实现高效的植物病害识别和分类。实验在广受欢迎的 PlantVillage 数据集的 15 个类别上进行,该数据集包含 38 个类别中 54305 个不同植物病害物种的图像样本。使用流行的预训练模型对超参数进行微调,包括 DenseNet201、ResNet101、ResNet50、GoogleNet、AlexNet、ResNet18、EfficientNetB7、NASNetMobile 和 ConvNeXtSmall。我们将这些 CNN 应用于所述的植物病害检测和分类问题,独立地和作为集成的一部分进行测试。在最后阶段,使用逻辑回归(LR)分类器来确定各种 CNN 模型组合的性能。还对分类器、深度学习、所提出的模型和类似的最新研究进行了比较分析。实验表明,与当前的 CNN 相比,当在几种植物疾病上进行测试时,PDDNet-AE 和 PDDNet-LVE 分别实现了 96.74%和 97.79%的准确率,这表明其具有出色的稳健性和泛化能力,并减轻了当前植物病害检测和分类中的一些担忧。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3215/10895770/8bc52b879182/12870_2024_4825_Fig1_HTML.jpg

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