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Chlorophyll estimation in soybean leaves infield with smartphone digital imaging and machine learning

机译:大豆叶绿素估计与智能手机数字影像和机器学习

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Soybean (Glycine max (L.) Merrill) leaf chlorophyll content is indicative of the plant growth and health issues. However, chlorophyll measurement using the standard chemical procedure is laborious, while the sensor-based electronic options, such as soil plant analysis development (SPAD) meter tend to be highly expensive and made only spot measurements. Therefore, a simpler and less expensive infield method of chlorophyll measurement in soybeans using smartphone camera with image processing and machine learning models was developed. Soybean leaf images (720 images) and SPAD readings were collected from different cultivars (4), with replications (3) and sampling dates (2) from experimental plots. Of the several color vegetation indices (CVIs) tested, the dark green color index (DGCI) had the best correlation with SPAD meter readings (r = 0.90), which was further improved by color calibration (r = 0.93). The results of the random coefficients model showed that both cultivars and sampling dates had no significant effect (0.06 <= P <= 0.96), hence data were combined for the analysis. The simpler statistical linear regression (SLR) and polynomial regression (PR), multiple linear regression as well as the advanced machine learning models (support vector machine (SVM), random forest (RF)) tested with color scheme inputs (RGB, DGCI, range pixel count (RPC) of DGCI, and 'Both' (RPC + RGB)) produced the best chlorophyll prediction with DGCI, RPC, and 'Both' inputs (0.87 < R-2 < 0.89; SPAD units). Overall, these models were not significantly different, but the SVM model found to be the best (R-2 = 0.89 and RMSE = 2.90 SPAD units). The simpler SLR and PR models with DGCI input (R-2 >= 0.87 and RMSE <= 3.1 SPAD units) performed as good as the advanced SVM and RF models. The SVM model had the potential of predicting the chlorophyll directly with the raw RGB input (R-2 = 0.86 and RMSE = 3.20 SPAD units) without the need of using the standard calibration board. The developed methodology of image processing with machine learning modeling and conversion relationship of measuring infield soybean leaf chlorophyll is efficient, inexpensive, not requiring the standard calibration board, and can be easily extended to other large-scale aerial imaging platforms and field crops.
机译:大豆(甘氨酸MAX(L.)Merrill)叶叶绿素含量表明植物生长和健康问题。然而,使用标准化学过程的叶绿素测量是费力的,而基于传感器的电子选择,如土壤植物分析开发(SPAD)仪往往是非常昂贵的并且仅制作点测量。因此,开发了使用具有图像处理和机器学习模型的智能手机摄像机的大豆中叶绿素测量的更简单和更便宜的叶绿素测量方法。从不同的品种(4)中收集大豆叶图像(720个图像)和Spad读数,重复(3)和实验图中的采样日期(2)。在测试的几种颜色植被指数(CVIS)中,暗绿色指数(DGCI)与SPAD仪表读数(r = 0.90)具有最佳相关性,其通过颜色校准进一步提高(r = 0.93)。随机系数模型的结果表明,栽培品种和采样日期没有显着效果(0.06 <= P <= 0.96),因此将数据组合用于分析。更简单的统计线性回归(SLR)和多项式回归(PR),多元线性回归以及高级机器学习模型(支持向量机(SVM),随机森林(RF)),用配色方案输入测试(RGB,DGCI, DGCI的范围像素计数(RPC)和'两个'(RPC + RGB))产生了DGCI,RPC和“两个”输入的最佳叶绿素预测(0.87 = 0.87和RMSE <= 3.1 SPAD单元)和高级SVM和RF模型执行。 SVM模型具有直接预测叶绿素的叶绿素(R-2 = 0.86和RMSE = 3.20 Spad单元),而无需使用标准校准板。通过机器学习建模和转换关系的显影方法的图像处理方法有效,便宜,不需要标准校准板,并且可以轻松扩展到其他大规模的空中影像平台和野外作物。

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