面向梯度直方图特征提取用于玉米叶片病害图像分类

Vincent Mbandu Ochango, Geoffrey Mariga Wambugu, John Gichuki Ndia
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引用次数: 0

摘要

提出了用于玉米叶片病害图像分类的特征提取方法和分类算法。从玉米病害图像中提取特征,并将特征传递给机器学习分类算法,根据特征提取方法检测到的特征识别可能的病害。所使用的玉米病害图像包括普通锈病、叶斑病、北方叶枯病和健康图像。对特征提取方法进行了评价,看哪一种特征提取方法在图像分类算法中表现最好。基于评价,结果显示直方图定向梯度与分类器相比,KAZE和定向FAST和旋转BRIEF表现最好。随机森林分类器在图像分类方面表现最好,基于四个性能指标,即准确性、精密度、召回率和f1分数。实验结果表明,随机森林的准确率为0.74,精密度为0.77,召回率为0.77,f1评分为0.75。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Extraction using Histogram of Oriented Gradients for Image Classification in Maize Leaf Diseases
The paper presents feature extraction methods and classification algorithms used to classify maize leaf disease images. From maize disease images, features are extracted and passed to the machine learning classification algorithm to identify the possible disease based on the features detected using the feature extraction method. The maize disease images used include images of common rust, leaf spot, and northern leaf blight and healthy images. An evaluation was done for the feature extraction method to see which feature extraction method performs best with image classification algorithms. Based on the evaluation, the outcomes revealed Histogram of Oriented Gradients performed best with classifiers compared to KAZE and Oriented FAST and rotated BRIEF. The random forest classifier emerged the best in terms of image classification, based on four performance metrics which are accuracy, precision, recall, and F1-score. The experimental outcome indicated that the random forest had 0.74 accuracy, 0.77 precision, 0.77 recall, and 0.75 F1-score.
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