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Combining canopy spectral reflectance and RGB images to estimate leaf chlorophyll content and grain yield in rice.

Authors :
Wang, Zhonglin
Tan, Xianming
Ma, Yangming
Liu, Tao
He, Limei
Yang, Feng
Shu, Chuanhai
Li, Leilei
Fu, Hao
Li, Biao
Sun, Yongjian
Yang, Zhiyuan
Chen, Zongkui
Ma, Jun
Source :
Computers & Electronics in Agriculture. Jun2024, Vol. 221, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

• This work provides a new model framework for predicting grain yield. • Combining spectral data and RGB images to develop the fusion models of grain yield. • Multi-source remotely sensed data can improve the estimation accuracy of rice LCC. • Multi-source remotely sensed data has the potential for grain yield prediction. Predicting rice grain yield using multi-source remotely sensed data is crucial for improving prediction accuracy, optimizing nitrogen management, and advancing precision agricultural development. However, the feasibility and reliability of using multi-source remotely sensed data to predict the grain yield remain unclear. Therefore, this study aimed to explore the possibility of providing rice leaf chlorophyll content (LCC) estimations and predictions of the grain yield using multi-source remotely sensed data. Two rice field experiments were conducted with various rice cultivars and nitrogen rates, and a field spectrometer and an unmanned aerial vehicle (UAV) equipped with a digital camera were employed to acquire the spectral reflectance and red–green–blue (RGB) images at the tillering, jointing, and full-heading stages. Destructive sampling was then conducted to measure the LCC and grain yield. The LCC was used as a bridge to develop remotely sensed prediction models for the grain yield. First, the linear relationship between grain yield and the LCC was determined at the tillering, jointing, and full-heading stages. A multiple linear regression (MLR) model was then developed to predict grain yield using multi-temporal LCCs at three growth stages. Second, multiple stepwise regression, support vector regression, and back propagation neural network were used to evaluate the estimation performance of spectral reflectance, RGB image data, and their combination for LCC. Third, the most accurate LCC estimation model was selected and coupled with the linear and MLR models of grain yield. The results showed that grain yield was significantly and positively related to the LCC at the tillering, jointing, and full-heading stages, and that the MLR model of grain yield achieved the best estimation accuracy using multi-temporal LCCs. The fusion models established by combining spectral reflectance and RGB image data improved LCC estimation accuracies. Using multi-growth stages, the most accurate predictions of grain yield were obtained from LCC estimation models (R 2 = 0.698, RMSE = 0.742 t ha−1, rRMSE = 9.004 %) compared to those using single growth stages. Our study concluded that multi-source remotely sensed data fused from ground-based spectral reference and UAV-based RGB images can better predict and explain the grain yield for both single and multi-growth stages. This study provides a novel method of estimating the crop chlorophyll content and grain yield. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01681699
Volume :
221
Database :
Academic Search Index
Journal :
Computers & Electronics in Agriculture
Publication Type :
Academic Journal
Accession number :
177392155
Full Text :
https://doi.org/10.1016/j.compag.2024.108975