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Detection and classification of citrus diseases in agriculture based on optimized weighted segmentation and feature selection

机译:基于优化加权分割和特征选择的农业柑橘疾病检测与分类

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In agriculture, plant diseases are primarily responsible for the reduction in production which causes economic losses. In plants, citrus is used as a major source of nutrients like vitamin C throughout the world. However, `Citrus' diseases badly effect the production and quality of citrus fruits. From last decade, the computer vision and image processing techniques have been widely used for detection and classification of diseases in plants. In this article, we propose a hybrid method for detection and classification of diseases in citrus plants. The proposed method consists of two primary phases; (a) detection of lesion spot on the citrus fruits and leaves; (b) classification of citrus diseases. The citrus lesion spots are extracted by an optimized weighted segmentation method, which is performed on an enhanced input image. Then, color, texture, and geometric features are fused in a codebook. Furthermore, the best features are selected by implementing a hybrid feature selection method, which consists of PCA score, entropy, and skewness-based covariance vector. The selected features are fed to Multi-Class Support Vector Machine (M-SVM) for final citrus disease classification. The proposed technique is tested on Citrus Disease Image Gallery Dataset, Combined dataset (Plant Village and Citrus Images Database of Infested with Scale), and our own collected images database. We used these datasets for detection and classification of citrus diseases namely anthracnose, black spot, canker, scab, greening, and melanose. The proposed technique outperforms the existing methods and achieves 97% classification accuracy on citrus disease image gallery dataset, 89% on combined dataset and 90.4% on our local dataset.
机译:在农业中,植物疾病主要负责减少产生经济损失的生产。在植物中,柑橘被用作全世界维生素C等营养素的主要来源。然而,“柑橘”疾病严重影响了柑橘类水果的生产和质量。从上十年来,计算机视觉和图像处理技术已被广泛用于植物中的疾病进行检测和分类。在本文中,我们提出了一种杂种方法,用于柑橘植物中的疾病进行检测和分类。该方法包括两个主要阶段; (a)检测柑橘类水果和叶子的病变点; (b)柑橘疾病的分类。柑橘病变斑是通过优化的加权分段方法提取,该方法在增强的输入图像上执行。然后,颜色,纹理和几何特征在码本中融合。此外,通过实现混合特征选择方法选择最佳特征,该方法由PCA得分,熵和基于偏斜的协方差矢量组成。将所选功能送入多级支持向量机(M-SVM)以进行最终柑橘病分类。该技术在柑橘氏病图像库数据集,组合数据集(植物村和柑橘图片数据库的焦虑的尺寸)上进行了测试,以及我们自己收集的图像数据库。我们使用这些数据集进行柑橘疾病的检测和分类,即Anthracnose,黑点,溃疡,结痂,绿化和黑色糖。所提出的技术优于现有的方法,在本地数据集中实现了柑橘病图像库数据集的97%的分类准确性,89%,在我们当地数据集中的90.4%。

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