Combinational feature approach: Performance improvement for image processing based leaf disease classification

M. Goswami, S. Maheshwari, Amarjeet Poonia
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引用次数: 3

Abstract

Plant disease is main reason of agricultural crops production losses. Leaf disease in plant occurs due to fungai, virus and bacterias. Image contains various important features which is used in classification. In this paper author initially detect disease then classify disease using extracted features. It takes five diseased leaves (Black rot, Black Measles, Leaf blight, Septoria leaf spot, Bacterial spot) and healthy leaf images then identify leaf is diseased or healthy then if leaf is diseased then classify type of disease. Color features mean, standard deviation, skewness and kurtosis computed then Region based shape feature calculated to identify the size of spots. Texture feature calculated using gray level co-occurrence matrix (GLCM) which identifies texture of image using distance and 45° angle variation in GLCM. Extracted features sent to trained feed forward neural network and classify diseased with color, shape and texture feature individually and combination of all features then observe that combination of color, shape and texture feature improve the performance of classification accuracy.
组合特征方法:基于图像处理的叶片病害分类性能改进
植物病害是造成农作物生产损失的主要原因。植物叶片病害是由真菌、病毒和细菌引起的。图像包含各种重要的特征,用于分类。本文首先对疾病进行初步检测,然后利用提取的特征对疾病进行分类。它需要五片患病的叶子(黑腐病,黑麻疹,叶枯萎病,Septoria叶斑病,细菌性斑病)和健康的叶子图像,然后确定叶子是患病的还是健康的,如果叶子患病,然后分类疾病类型。计算颜色特征的均值、标准差、偏度和峰度,然后计算基于区域的形状特征来识别斑点的大小。采用灰度共生矩阵(GLCM)计算纹理特征,利用灰度共生矩阵中的距离和45°角变化来识别图像的纹理。将提取的特征发送到训练好的前馈神经网络中,分别用颜色、形状和纹理特征以及所有特征的组合对疾病进行分类,观察颜色、形状和纹理特征的组合提高了分类准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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