Ensemble Learning for Pea Yield Estimation Using Unmanned Aerial Vehicles, Red Green Blue, and Multispectral Imagery

Author:

Liu Zehao1,Ji Yishan1,Ya Xiuxiu2,Liu Rong1ORCID,Liu Zhenxing2,Zong Xuxiao1ORCID,Yang Tao1

Affiliation:

1. State Key Laboratory of Crop Gene Resources and Breeding, Institute of Crop Sciences, Chinese Academy of Agricultural Sciences, Haidian District, Beijing 100081, China

2. Tangshan Academy of Agricultural Sciences (TAAS), Tangshan 036001, China

Abstract

Peas are one of the most important cultivated legumes worldwide, for which early yield estimations are helpful for agricultural planning. The unmanned aerial vehicles (UAVs) have become widely used for crop yield estimations, owing to their operational convenience. In this study, three types of sensor data (red green blue [RGB], multispectral [MS], and a fusion of RGB and MS) across five growth stages were applied to estimate pea yield using ensemble learning (EL) and four base learners (Cubist, elastic net [EN], K nearest neighbor [KNN], and random forest [RF]). The results showed the following: (1) the use of fusion data effectively improved the estimation accuracy in all five growth stages compared to the estimations obtained using a single sensor; (2) the mid filling growth stage provided the highest estimation accuracy, with coefficients of determination (R2) reaching up to 0.81, 0.8, 0.58, and 0.77 for the Cubist, EN, KNN, and RF algorithms, respectively; (3) the EL algorithm achieved the best performance in estimating pea yield than base learners; and (4) the different models were satisfactory and applicable for both investigated pea types. These results indicated that the combination of dual-sensor data (RGB + MS) from UAVs and appropriate algorithms can be used to obtain sufficiently accurate pea yield estimations, which could provide valuable insights for agricultural remote sensing research.

Funder

Key R&D Program of Hebei Province

State Key Laboratory of Crop Gene Resources and Breeding

China Agriculture Research System

Ministry of Science and Technology of China

Agricultural Science and Technology Innovation Program in CAAS

Publisher

MDPI AG

Reference54 articles.

1. Net energy, energy utilization, and nitrogen and energy balance affected by dietary pea supplementation in broilers;Sharma;Anim. Nutr.,2021

2. Large-scale evaluation of pea (Pisum sativum L.) germplasm for cold tolerance in the field during winter in Qingdao;Zhang;Crop J.,2016

3. Cultivated land and food supply in China;Li;Land Use Policy,2000

4. A new crop yield forecasting model based on satellite measurements applied across the Indus Basin, Pakistan;Bastiaanssen;Agric. Ecosyst. Environ.,2003

5. Allen, R., Hanuschak, G., and Craig, M. (2002). Limited Use of Remotely Sensed Data for Crop Condition Monitoring and Crop Yield Forecasting in NASS.

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