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基于混合深度学习模型的芸豆叶斑病检测

Detection of kidney bean leaf spot disease based on a hybrid deep learning model.

作者信息

Wang Yiwei, Wang Qianyu, Su Yue, Jing Binghan, Feng Meichen

机构信息

College of Agriculture, Shanxi Agricultural University, Jinzhong, China.

出版信息

Sci Rep. 2025 Apr 1;15(1):11185. doi: 10.1038/s41598-025-93742-7.

Abstract

Rapid diagnosis of kidney bean leaf spot disease is crucial for ensuring crop health and increasing yield. However, traditional machine learning methods face limitations in feature extraction, while deep learning approaches, despite their advantages, are computationally expensive and do not always yield optimal results. Moreover, reliable datasets for kidney bean leaf spot disease remain scarce. To address these challenges, this study constructs the first-ever kidney bean leaf spot disease (KBLD) dataset, filling a significant gap in the field. Based on this dataset, a novel hybrid deep learning model framework is proposed, which integrates deep learning models (EfficientNet-B7, MobileNetV3, ResNet50, and VGG16) for feature extraction with machine learning algorithms (Logistic Regression, Random Forest, AdaBoost, and Stochastic Gradient Boosting) for classification. By leveraging the Optuna tool for hyperparameter optimization, 16 combined models were evaluated. Experimental results show that the hybrid model combining EfficientNet-B7 and Stochastic Gradient Boosting achieves the highest detection accuracy of 96.26% on the KBLD dataset, with an F1-score of 0.97. The innovations of this study lie in the construction of a high-quality KBLD dataset and the development of a novel framework combining deep learning and machine learning, significantly improving the detection efficiency and accuracy of kidney bean leaf spot disease. This research provides a new approach for intelligent diagnosis and management of crop diseases in precision agriculture, contributing to increased agricultural productivity and ensuring food security.

摘要

菜豆叶斑病的快速诊断对于确保作物健康和提高产量至关重要。然而,传统机器学习方法在特征提取方面存在局限性,而深度学习方法尽管具有优势,但计算成本高昂且并不总能产生最佳结果。此外,用于菜豆叶斑病的可靠数据集仍然稀缺。为应对这些挑战,本研究构建了首个菜豆叶斑病(KBLD)数据集,填补了该领域的重大空白。基于此数据集,提出了一种新颖的混合深度学习模型框架,该框架将用于特征提取的深度学习模型(EfficientNet - B7、MobileNetV3、ResNet50和VGG16)与用于分类的机器学习算法(逻辑回归、随机森林、AdaBoost和随机梯度提升)相结合。通过利用Optuna工具进行超参数优化,对16个组合模型进行了评估。实验结果表明,结合EfficientNet - B7和随机梯度提升的混合模型在KBLD数据集上实现了最高检测准确率96.26%,F1分数为0.97。本研究的创新之处在于构建了高质量的KBLD数据集以及开发了一种将深度学习和机器学习相结合的新颖框架,显著提高了菜豆叶斑病的检测效率和准确率。本研究为精准农业中作物病害的智能诊断和管理提供了一种新方法,有助于提高农业生产力并确保粮食安全。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8bc9/11961604/bfd0e758e5d4/41598_2025_93742_Fig1_HTML.jpg

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