Rodriguez-Sanchez Javier, Li Changying, Paterson Andrew H
Bio-Sensing and Instrumentation Laboratory, College of Engineering, The University of Georgia, Athens, GA, United States.
Phenomics and Plant Robotics Center, The University of Georgia, Athens, GA, United States.
Front Plant Sci. 2022 Apr 26;13:870181. doi: 10.3389/fpls.2022.870181. eCollection 2022.
Estimation of cotton yield before harvest offers many benefits to breeding programs, researchers and producers. Remote sensing enables efficient and consistent estimation of cotton yields, as opposed to traditional field measurements and surveys. The overall goal of this study was to develop a data processing pipeline to perform fast and accurate pre-harvest yield predictions of cotton breeding fields from aerial imagery using machine learning techniques. By using only a single plot image extracted from an orthomosaic map, a Support Vector Machine (SVM) classifier with four selected features was trained to identify the cotton pixels present in each plot image. The SVM classifier achieved an accuracy of 89%, a precision of 86%, a recall of 75%, and an F1-score of 80% at recognizing cotton pixels. After performing morphological image processing operations and applying a connected components algorithm, the classified cotton pixels were clustered to predict the number of cotton bolls at the plot level. Our model fitted the ground truth counts with an value of 0.93, a normalized root mean squared error of 0.07, and a mean absolute percentage error of 13.7%. This study demonstrates that aerial imagery with machine learning techniques can be a reliable, efficient, and effective tool for pre-harvest cotton yield prediction.
收获前对棉花产量进行估测,对育种项目、研究人员和生产者而言益处诸多。与传统的田间测量和调查不同,遥感技术能够高效且一致地估测棉花产量。本研究的总体目标是开发一种数据处理流程,利用机器学习技术从航空影像中快速、准确地预测棉花育种田收获前的产量。通过仅使用从正射镶嵌图中提取的单个地块图像,训练了一个具有四个选定特征的支持向量机(SVM)分类器,以识别每个地块图像中存在的棉花像素。在识别棉花像素方面,SVM分类器的准确率达到89%,精确率为86%,召回率为75%,F1分数为80%。在执行形态学图像处理操作并应用连通分量算法后,对分类后的棉花像素进行聚类,以预测地块层面的棉铃数量。我们的模型与地面真实计数的拟合值为0.93,归一化均方根误差为0.07,平均绝对百分比误差为13.7%。本研究表明,结合机器学习技术的航空影像可成为收获前棉花产量预测的可靠、高效且有效的工具。