Improving Wheat Leaf Nitrogen Concentration (LNC) Estimation across Multiple Growth Stages Using Feature Combination Indices (FCIs) from UAV Multispectral Imagery

Author:

Su Xiangxiang1,Nian Ying1,Yue Hu1,Zhu Yongji1,Li Jun1,Wang Weiqiang1,Sheng Yali1,Ma Qiang1,Liu Jikai12,Wang Wenhui3,Li Xinwei124

Affiliation:

1. College of Resource and Environment, Anhui Science and Technology University, Fengyang 233100, China

2. Anhui Engineering Research Center of Smart Crop Planting and Processing Technology, Fengyang 233100, China

3. College of Life Sciences, Langfang Normal University, Langfang 065000, China

4. Anhui Province Agricultural Waste Fertilizer Utilization and Cultivated Land Quality Improvement Engineering Research Center, Anhui Science and Technology University, Fengyang 233100, China

Abstract

Leaf nitrogen concentration (LNC) is a primary indicator of crop nitrogen status, closely related to the growth and development dynamics of crops. Accurate and efficient monitoring of LNC is significant for precision field crop management and enhancing crop productivity. However, the biochemical properties and canopy structure of wheat change across different growth stages, leading to variations in spectral responses that significantly impact the estimation of wheat LNC. This study aims to investigate the construction of feature combination indices (FCIs) sensitive to LNC across multiple wheat growth stages, using remote sensing data to develop an LNC estimation model that is suitable for multiple growth stages. The research employs UAV multispectral remote sensing technology to acquire canopy imagery of wheat during the early (Jointing stage and Booting stage) and late (Early filling and Late filling stages) in 2021 and 2022, extracting spectral band reflectance and texture metrics. Initially, twelve sensitive spectral feature combination indices (SFCIs) were constructed using spectral band information. Subsequently, sensitive texture feature combination indices (TFCIs) were created using texture metrics as an alternative to spectral bands. Machine learning algorithms, including partial least squares regression (PLSR), random forest regression (RFR), support vector regression (SVR), and Gaussian process regression (GPR), were used to integrate spectral and texture information, enhancing the estimation performance of wheat LNC across growth stages. Results show that the combination of Red, Red edge, and Near-infrared bands, along with texture metrics such as Mean, Correlation, Contrast, and Dissimilarity, has significant potential for LNC estimation. The constructed SFCIs and TFCIs both enhanced the responsiveness to LNC across multiple growth stages. Additionally, a sensitive index, the Modified Vegetation Index (MVI), demonstrated significant improvement over NDVI, correcting the over-saturation concerns of NDVI in time-series analysis and displaying outstanding potential for LNC estimation. Spectral information outperforms texture information in estimation capability, and their integration, particularly with SVR, achieves the highest precision (coefficient of determination (R2) = 0.786, root mean square error (RMSE) = 0.589%, and relative prediction deviation (RPD) = 2.162). In conclusion, the sensitive FCIs developed in this study improve LNC estimation performance across multiple growth stages, enabling precise monitoring of wheat LNC. This research provides insights and technical support for the construction of sensitive indices and the precise management of nitrogen nutrition status in field crops.

Funder

Scientific research projects in higher education institutions of Anhui Province

Anhui Province Crop Intelligent Planting and Processing Technology Engineering Research Center

Natural Science Foundation of Hebei Province

Scientific research projects in higher education institutions of Hebei Province

Publisher

MDPI AG

Reference86 articles.

1. Genome-wide association mapping of yield and yield components of spring wheat under contrasting moisture regimes;Edae;Theor. Appl. Genet.,2014

2. Identification of major QTLs for yield-related traits with improved genetic map in wheat;Ma;Front. Plant Sci.,2023

3. Reflectance measurement of canopy biomass and nitrogen status in wheat crops using normalized difference vegetation indices and partial least squares regression;Hansen;Remote Sens. Environ.,2003

4. An assessment of multi-view spectral information from UAV-based color-infrared images for improved estimation of nitrogen nutrition status in winter wheat;Lu;Precis. Agric.,2022

5. Tan, C., Guo, W., and Wang, J. (2011, January 24–26). Predicting grain protein content of winter wheat based on landsat TM images and leaf nitrogen Content. Proceedings of the 2011 International Conference on Remote Sensing, Environment and Transportation Engineering, Nanjing, China.

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