Hybrid rater to quantify and measure the severity of infection and spread of infection in muskmelon

D. Kannan, Amutha Balakrishnan, K. M. Devi, Nagendra Singh, P. A. Kiruba, R. Ramkumar, D. Karthikeyan
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Abstract

Disease severity index (DIS) is a way of calculating the percentage of infection spread across the field. The percentage of infection in each leaf has been considered at a time stamp is being calculated and based on that disease, severity of disease spread is analyzed. With the advancement in machine learning and deep learning algorithms in the field of computer vision, identification and classification of diseases is effortless. Percentage of infection in a particular leaf, disease index (DI) is calculated using image processing techniques like Otsu threshold method. With this DI and scales, grading the severity of the infection across the field can be achieved. In this paper various scales used for grading severity of infection namely Horsfall-Barratt (H-B scale) quantitative ordinal scale, Amended 20% ordinal scale, and nearest percent estimates (NPEs) in muskmelon is explored, and based on the empirical results Amended 20% ordinal scale is most efficient method of estimating the DIS is to use the midpoint of the severity scope for each class with twenty percent adjusted to ordinal scale. The results show that the density of leaves is directly proportional to spread of diseases in muskmelon plant.
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用于量化和测量麝香瓜感染和传播严重程度的杂交测报仪
病害严重程度指数(DIS)是一种计算田间感染扩散百分比的方法。计算时考虑了每片叶片的感染百分比,并根据该病害分析病害蔓延的严重程度。随着计算机视觉领域中机器学习和深度学习算法的进步,病害的识别和分类变得毫不费力。通过大津阈值法等图像处理技术,可以计算出特定叶片的感染百分比、病害指数(DI)。有了病害指数和标度,就可以对田间感染的严重程度进行分级。本文探讨了用于对麝香瓜感染严重程度进行分级的各种标度,即 Horsfall-Barratt(H-B 标度)定量序数标度、修正的 20% 序数标度和最近百分数估计值(NPEs),根据经验结果,修正的 20% 序数标度是估算 DIS 的最有效方法,即使用每级严重程度范围的中点,并将 20% 调整为序数标度。结果表明,叶片密度与麝香瓜植株的病害传播成正比。
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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