Correlation of Egg counts, Micro-nutrients, and NDVI Distribution for Accurate Tracking of SCN Population Density Detection

Anton Skurdal, Youness Arjoune, Niroop Sugunaraj, Shree Ram Abayankar Balaji, Sreejith V. Nair, Prakash Ranganathan, Burton Johnson
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Abstract

Soybean Cyst Nematode (SCN) is a serious pathogen in soybean production and contributes to annual economic losses of more than $1.5 billion (1996–2016) in the U.S. SCN is a microscopic thread-like nematode that burrows into the roots of soybean plants and typically cannot be identified above ground. The paper investigates multitude of variables such as NDVI from multi-spectral images, egg counts, and micro-nutrient composition (e.g., pH, nitrogen, phosphorus, potassium) across two SCN-prone field plots in Casselton/Prosper, North Dakota. The preliminary results indicate that NDVI is a good metric to track for SCN density population during planting, growing, and harvesting periods along with other historical ground truth data. Also, a contour plot using Empirical Bayesian Kriging (EBK) was designed by integrating NDVI and egg count data for co-tracking distribution changes. Such access to ground truth data (i.e., aerial and soil properties) will enable the development and training of robust machine learning models for predicting SCN hotspots.
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卵数、微量营养素和NDVI分布的相关性用于精确跟踪SCN种群密度检测
大豆囊肿线虫(Soybean囊肿Nematode, SCN)是大豆生产中的一种严重病原体,在1996年至2016年期间,每年给美国造成超过15亿美元的经济损失。SCN是一种微小的丝状线虫,钻入大豆植物的根部,通常在地面上无法识别。本文调查了北达科他州Casselton/Prosper两个scn易发地块的多种变量,如来自多光谱图像的NDVI、卵数和微量营养成分(如pH、氮、磷、钾)。初步结果表明,NDVI是一个很好的指标,用于跟踪种植、生长和收获期间的SCN密度种群,以及其他历史地面真实数据。结合NDVI和卵数数据,设计了基于经验贝叶斯克里格(EBK)的等高线图,共同跟踪分布变化。这种对地面真实数据(即空气和土壤属性)的访问将使开发和训练用于预测SCN热点的强大机器学习模型成为可能。
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