Evaluating how lodging affects maize yield estimation based on UAV observations

Front Plant Sci. 2023 Jan 17:13:979103. doi: 10.3389/fpls.2022.979103. eCollection 2022.

Abstract

Timely and accurate pre-harvest estimates of maize yield are vital for agricultural management. Although many remote sensing approaches have been developed to estimate maize yields, few have been tested under lodging conditions. Thus, the feasibility of existing approaches under lodging conditions and the influence of lodging on maize yield estimates both remain unclear. To address this situation, this study develops a lodging index to quantify the degree of lodging. The index is based on RGB and multispectral images obtained from a low-altitude unmanned aerial vehicle and proves to be an important predictor variable in a random forest regression (RFR) model for accurately estimating maize yield after lodging. The results show that (1) the lodging index accurately describes the degree of lodging of each maize plot, (2) the yield-estimation model that incorporates the lodging index provides slightly more accurate yield estimates than without the lodging index at three important growth stages of maize (tasseling, milking, denting), and (3) the RFR model with lodging index applied at the denting (R5) stage yields the best performance of the three growth stages, with R2 = 0.859, a root mean square error (RMSE) of 1086.412 kg/ha, and a relative RMSE of 13.1%. This study thus provides valuable insight into the precise estimation of crop yield and demonstra\tes that incorporating a lodging stress-related variable into the model leads to accurate and robust estimates of crop grain yield.

Keywords: UAV images; lodging levels; maize yield; random forest regression; remote sensing.

Grants and funding

This research was supported by Central Public‐interest Scientific Institution Basal Research Fund for Chinese Academy of Agricultural Sciences (Y2020YJ07, Y2022XK22), National Natural Science Foundation of China (42071426, 51922072, 51779161, 51009101), the National Key Research and Development Program of China (2021YFD1201602), the Agricultural Science and Technology Innovation Program of the Chinese Academy of Agricultural Sciences, Hainan Yazhou Bay Seed Lab (JBGS+B21HJ0221), Nanfan Special Project, CAAS (YJTC01, YBXM01), and the Special Fund for Independent Innovation of Agricultural Science and Technology in Jiangsu, China (CX(21)3065).