基于预训练和传统机器学习模型的马铃薯病害预测

Swati Laxmi Sahu, Renta Chintala Bhargavi
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引用次数: 0

摘要

马铃薯是我国最具商业价值的蔬菜之一,以其营养价值高、风味鲜美而闻名于世。印度是世界主要的马铃薯生产国之一。不幸的是,马铃薯的植物病害已成为产量下降的原因之一。因此,有必要对它们进行检测。植物病害图像的采集是一项巨大的挑战,因为这是一个非常耗时的过程。通常,我们没有足够的数据来训练我们的深度学习模型,因此使用数据增强技术来增加数据集,从而导致较差的泛化。这项研究的重点是检测植物是健康还是患病。该方法采用有限数据集进行马铃薯病害分类,不使用任何数据增强技术。流行的预训练模型- VGG16, InceptionResNetV2, ResNet50V2用于特征提取,传统的机器学习算法- XGBoost,支持向量机(SVM), k -最近邻(KNN),随机森林被用作分类器。从研究中可以看出,VGG16模型作为特征提取器,SVM作为分类器的组合,与其他模型与算法的组合相比,准确率最高,达到93%。该方法可用于有限数据集的马铃薯病害检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Diseases in Potato Plant using Pre-trained and Traditional Machine Learning Models
Potato, among the most vegetables is commercially significant and well-known vegetable which is known for its high nutritional content and delicious flavor. India is one of the world’s leading producers of potato. Unfortunately, plant diseases in potato have been one of the causes of decreased production. So, it is necessary to detect them. Collecting images of plants diseases is a big challenge as it is a very time-consuming process. Often, we do not have sufficient data to train our deep learning models, so data augmentation techniques are used for increasing the dataset which lead to poor generalization. This study focuses on detecting whether the plant is healthy or diseased. In this proposed method, limited dataset is used for potato plant disease classification without using any data augmentation techniques. Popular pre-trained models — VGG16, InceptionResNetV2, ResNet50V2 are used for feature extraction and traditional machine learning algorithms — XGBoost, Support Vector Machine (SVM), K-Nearest Neighbor (KNN), Random Forest are used as classifiers. From the study, it is observed that the combination of VGG16 model as a feature extractor and SVM as a classifier achieved the highest accuracy of 93% compared to rest of the combination of models and algorithms. The method proposed in this study can be used for potato plant disease detection with limited dataset.
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