基于集成学习的植物病害检测

Hari Kishan Kondaveeti, Kalyan Gandhi Ujini, Bikkina Veera Venkata Pavankumar, Bollu Sai Tarun, S. Gopi
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摘要

集成学习是一种机器学习方法,它将多个模型的预测结合起来,以便做出更准确的预测。在这项研究中,利用集成学习技术开发了一个植物病害检测系统,该系统使用了Inception V3、MobileNet、MobileNetV2、VGG16、GoogleNet和ResNet50六个基本模型,对来自38个不同类别的87,000张健康和患病植物叶片图像进行了训练。在植物病害数据集上,基本模型的准确率为72.7% ~ 97.2%。为了提高系统的准确率,对基本模型分别采用了软投票和硬投票分类器。软投票包括根据每个基本模型的准确性对其预测进行加权,并将加权平均值最高的类别作为最终预测。硬投票包括简单地计算每个类别的投票数,投票最多的类别被选为最终预测。软投票和硬投票都显著提高了系统的准确率,软投票集合的准确率达到97.8%,硬投票集合的准确率达到98.3%。本研究的结果证明了将集成学习用于植物病害检测的有效性,以及该系统有助于准确有效地识别植物病害的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Plant Disease Detection Using Ensemble Learning
Ensemble learning is a machine learning method that combines the predictions of multiple models in order to make a more accurate prediction. In this study, a plant disease detection system was developed using ensemble learning, with six base models Inception V3, MobileNet, MobileNetV2, VGG16, GoogleNet, and ResNet50 trained on a dataset of 87,000 images of healthy and diseased plant leaves from 38 different classes. The base models achieved accuracies ranging from 72.7% to 97.2% on the plant disease dataset. To improve the accuracy of the system, both soft and hard voting classifiers were applied to the base models. Soft voting involves weighting the predictions of each base model according to their accuracy and taking the class with the highest weighted average as the final prediction. Hard voting consists of simply counting the number of votes cast for each class, and the class with the most votes is selected as the final prediction. Both soft and hard voting significantly improved the accuracy of the system, with the soft voting ensemble achieving an accuracy of 97.8% and the hard voting ensemble achieving an accuracy of 98.3%. The results of this study demonstrate the effectiveness of using ensemble learning for plant disease detection and the potential for such a system to assist in the accurate and efficient identification of plant diseases.
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