移动应用快速测定大豆叶片氮含量

M. A. Adhiwibawa, Christian Tantono, K. Prilianti, M. N. U. Prihastyanti, L. Limantara, T. H. Brotosudarmo
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引用次数: 10

摘要

氮是大豆生长的重要营养元素之一。在本文中,我们提出了一种可以用于无损估计大豆叶片氮含量的移动应用程序。我们将这个软件命名为“Mata Daun”。该软件的主要概念是将捕获的大豆图像的RGB(红、绿、蓝)值与其氮含量联系起来。此外,为了便于软件算法处理,采用数字图像处理方法将捕获的图像处理成增强颜色可见度(ECV)指数。通过标定过程和田间试验,确定了ECV指数与大豆叶片含氮量的关系。校准结果表明,该应用程序的氮读数与大豆叶片氮含量(Agriexpert CCN-6000读数)具有相当强的相关性(R2 =0.70)。田间试验结果表明,预测的大豆叶片氮含量与实际的大豆叶片氮含量呈正相关(R2 =0.93)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rapid nitrogen determination of soybean leaves using mobile application
Nitrogen is one of the important nutrients elements for the growth of soybean plants. In this paper we propose mobile application that can be used nondestructively to estimate the nitrogen content of soybean leaves. We named this software “Mata Daun”. The primary concept of this software is to relate the RGB (Red, Green, Blue) value of the captured soybean image with its nitrogen content. Furthermore, the captured image is processed into Enhanced Color Visibility (ECV) index using digital image processing method for the ease of software algorithm process. Calibration process and field trial were conducted to found the relation between ECV index and soybean leaves nitrogen content. The calibration result showed that the nitrogen readings by this application had a fairly strong relationship (R2 =0.70) with the soybean leaves nitrogen content (Agriexpert CCN-6000 readings). The field test result also gave the same strong positive relationship between predicted and real soybean leaves nitrogen content (R2 =0.93).
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