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An Automated Image Processing Method for Segmentation and Quantification of Rust Disease in Maize Leaves

机译:玉米叶片锈病的自动图像处理方法

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$A$ In the agro-ecological domain, maize is one of the most dominantcrops of the world. The disease of the maize plantation not only affect the nutritional balance but also the economics related to the crop. In this paper, an automated image processing method is proposed to identify the rust affected maize leaves and differentiate them from the healthy maize leaves. Segmentation and quantification of the rusted portion from the images of the maize leaf is done. The rust affected portion is accurately quantified of the maize leaf using morphological operations and area based thresholding to make the algorithm computationally efficient. Quantification of the segmented rusted spots is done to measure the degree of damage done by the crop disease. The results obtained from the proposed methodology are encouraging and can be used in agricultural industry for some real-time detection of diseases affecting the productivity of crops.
机译:$ A $在农业生态领域,玉米是世界上最主要的农作物之一。玉米种植园的病害不仅影响营养平衡,而且影响与作物有关的经济。本文提出了一种自动图像处理方法来识别受锈蚀影响的玉米叶片,并将其与健康玉米叶片区分开。从玉米叶片图像中对生锈部分进行了分割和量化。使用形态学运算和基于面积的阈值化技术,可以准确定量玉米叶片的锈病影响部分,从而使算法具有较高的计算效率。对分割的锈斑进行定量以测量农作物病害造成的损害程度。从所提出的方法学中获得的结果令人鼓舞,并且可以用于农业工业中对影响作物生产力的疾病进行一些实时检测。

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