...
首页> 外文期刊>Indian Journal of Science and Technology >An effective approach to feature extraction for classification of plant diseases using machine learning
【24h】

An effective approach to feature extraction for classification of plant diseases using machine learning

机译:采用机器学习植物疾病分类特征提取的有效方法

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Objectives: To make automatic classification of diseased potato and grape leaf from normal potato and grape leaf. Methods: Experimental sample size of 3000 and 4270 Potato and Grape leaf images were used respectively. The diseased and healthy leaf image samples were taken from PlantVillage dataset. The color features viz., average Red, Green, Blue and Hue intensities of Lesion region were calculated. Features namely Contrast, Dissimilarity, Homogeneity, Energy, Correlation, ASM, and Entropy were extracted from hue lesion region. Also, histogram features such as mean and standard deviation were extracted from hue infected region. Then, data normalization was done on feature set to bring all features into a common scale. Finally, Na?ve Bayes, K Nearest Neighbor and Support Vector Machine Classifiers were applied on the above said feature sets. Findings: The Dataset was split in the ratio of 80% and 20% for training and test sets. The classifiers NB, KNN and SVM classified Potato leaves with an accuracy of 88.67%, 94.00% and 96.83% respectively and Grape leaves with an accuracy of 81.87%, 93.10% and 96.02% respectively. For both the species, SVM classifier gave the highest accuracy. Also, it was found that the proposed method performs well as compared with the related works in the literature. Novelty/Applications: An effective feature extraction method to classify grape and potato diseases was proposed in this research work. Also, it was found that the proposed method performs well as compared with the related works in the literature.
机译:目标:从普通土豆和葡萄叶自动分类患病土豆和葡萄叶。方法:分别使用3000和4270马铃薯和葡萄叶片图像的实验样本。患病和健康的叶片图像样品取自植物血液数据集。计算颜色特征,计算损伤区域的平均红色,绿色,蓝色和色调强度。特征是对比度,异化,均匀性,能量,相关性,ASM和熵从色调病变区提取。此外,从色调感染区域提取诸如平均值和标准偏差的直方图特征。然后,在功能集中完成数据归一化,以将所有功能带入常规规模。最后,在上述特征集上应用Na ve贝雷斯,K最近邻居和支持向量机分类器。调查结果:数据集以80%和20%的比例分开,培训和测试集。分类器NB,KNN和SVM分类马铃薯叶,精度分别为88.67%,94.00%和96.83%,葡萄叶的精度分别为81.87%,93.10%和96.02%。对于这些种类,SVM分类器都具有最高的精度。此外,发现该方法与文献中的相关工程相比表现良好。新颖/应用:在本研究工作中提出了一种对葡萄和马铃薯疾病进行分类的有效特征的提取方法。此外,发现该方法与文献中的相关工程相比表现良好。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号