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Faba Bean (vicia Faba L.) Yield Estimation Based on Dual-Sensor Data

DRONES(2023)

Chinese Acad Agr Sci | Beijing Univ Agr | Qinghai Univ

Cited 4|Views39
Abstract
Faba bean is an important member of legumes, which has richer protein levels and great development potential. Yield is an important phenotype character of crops, and early yield estimation can provide a reference for field inputs. To facilitate rapid and accurate estimation of the faba bean yield, the dual-sensor (RGB and multi-spectral) data based on unmanned aerial vehicle (UAV) was collected and analyzed. For this, support vector machine (SVM), ridge regression (RR), partial least squares regression (PLS), and k-nearest neighbor (KNN) were used for yield estimation. Additionally, the fusing data from different growth periods based on UAV was first used for estimating faba bean yield to obtain better estimation accuracy. The results obtained are as follows: for a single-growth period, S2 (12 July 2019) had the best accuracy of the estimation model. For fusion data from the muti-growth period, S2 + S3 (12 August 2019) obtained the best estimation results. Furthermore, the coefficient of determination (R2) values for RF were higher than other machine learning algorithms, followed by PLS, and the estimation effects of fusion data from a dual-sensor were evidently better than from a single sensor. In a word, these results indicated that it was feasible to estimate the faba bean yield with high accuracy through data fusion based on dual-sensor data and different growth periods.
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Key words
machine learning algorithms,phenotype,unmanned aerial vehicle,growth periods,model
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要点】:本研究利用无人机收集的双传感器(RGB和多光谱)数据,通过机器学习算法实现了蚕豆产量的快速准确估算,创新性地应用了多生长时期数据融合技术来提高估算准确度。

方法】:研究采用了支持向量机(SVM)、岭回归(RR)、偏最小二乘回归(PLS)和k-最近邻(KNN)等机器学习算法进行产量估算。

实验】:实验在2019年不同生长时期(S2:7月12日和S3:8月12日)收集数据,使用无人机双传感器技术,最终结果显示融合S2和S3期的数据得到的估算结果最优,且随机森林(RF)算法的R2值最高,双传感器融合数据估算效果明显优于单一传感器。