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Classification of Soybean Pubescence from Multispectral Aerial Imagery

机译:来自多光谱空中图像的大豆青豆复制分类

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摘要

The accurate determination of soybean pubescence is essential for plant breeding programs and cultivar registration. Currently, soybean pubescence is classified visually, which is a labor-intensive and time-consuming activity. Additionally, the three classes of phenotypes (tawny, light tawny, and gray) may be difficult to visually distinguish, especially the light tawny class where misclassification with tawny frequently occurs. The objectives of this study were to solve both the throughput and accuracy issues in the plant breeding workflow, develop a set of indices for distinguishing pubescence classes, and test a machine learning (ML) classification approach. A principal component analysis (PCA) on hyperspectral soybean plot data identified clusters related to pubescence classes, while a Jeffries-Matusita distance analysis indicated that all bands were important for pubescence class separability. Aerial images from 2018, 2019, and 2020 were analyzed in this study. A 60-plot test (2019) of genotypes with known pubescence was used as reference data, while whole-field images from 2018, 2019, and 2020 were used to examine the broad applicability of the classification methodology. Two indices, a red/blue ratio and blue normalized difference vegetation index (blue NDVI), were effective at differentiating tawny and gray pubescence types in high-resolution imagery. A ML approach using a support vector machine (SVM) radial basis function (RBF) classifier was able to differentiate the gray and tawny types (83.1% accuracy and kappa = 0.740 on a pixel basis) on images where reference training data was present. The tested indices and ML model did not generalize across years to imagery that did not contain the reference training panel, indicating limitations of using aerial imagery for pubescence classification in some environmental conditions. High-throughput classification of gray and tawny pubescence types is possible using aerial imagery, but light tawny soybeans remain difficult to classify and may require training data from each field season.
机译:精确测定大豆青少年对植物育种计划和品种登记至关重要。目前,大豆青少年在视觉上进行了分类,这是一种劳动密集型和耗时的活动。另外,三类表型(黄褐色,轻黄色,灰色)可能难以在视觉上区分,尤其是常常发生黄褐色的轻黄色课程。本研究的目标是解决植物育种工作流程的吞吐量和准确性问题,开发一组用于区分青色类的指数,并测试机器学习(ML)分类方法。高光谱大豆绘图数据的主要成分分析(PCA)识别与青春期类相关的集群,而Jeffries-Matusita距离分析表明,所有带对青春期间的分析都很重要。本研究分析了2018年,2019年,2019年和2020年的空中图像。使用已知的青春期的60-曲线测试(2019)用作参考数据,而2018年,2019年和2020年的全场图像用于检查分类方法的广泛适用性。两个指数,红色/蓝色比和蓝色归一化差异植被指数(蓝色NDVI)有效地在高分辨率图像中区分黄褐色和灰色葡萄酒类型。使用支持向量机(SVM)径向基函数(RBF)分类器的ML方法能够在存在参考训练数据的图像上区分灰色和黄褐色类型(在像素上的基础上的kappa = 0.740)。测试指数和ML模型在多年来对不包含参考培训面板的图像没有概括,表明在一些环境条件下使用空中图像使用空中图像的局限性。使用空中图像可以实现灰色和黄褐色的高吞吐量分类,但轻黄色大豆仍然难以进行分类,可能需要从每个场季节训练数据。

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