Enhanced Estimation of Rice Leaf Nitrogen Content via the Integration of Hybrid Preferred Features and Deep Learning Methodologies

Author:

Peng Yiping123,Zhong Wenliang123,Peng Zhiping123,Tu Yuting123,Xu Yanggui123,Li Zhuxian123,Liang Jianyi123,Huang Jichuan123,Liu Xu4,Fu Youqiang5

Affiliation:

1. Institute of Agricultural Resources and Environment, Guangdong Academy of Agricultural Sciences, Guangzhou 510640, China

2. Key Laboratory of Plant Nutrition and Fertilizer in South Region, Ministry of Agriculture, Guangzhou 510640, China

3. Guangdong Key Laboratory of Nutrient Cycling and Farmland Conservation, Guangzhou 510640, China

4. Institute of Agricultural Economics and Information, Guangdong Academy of Agricultural Sciences, Guangzhou 510640, China

5. Rice Research Institute, Guangdong Academy of Agricultural Sciences, Guangzhou 510640, China

Abstract

Efficiently obtaining leaf nitrogen content (LNC) in rice to monitor the nutritional health status is crucial in achieving precision fertilization on demand. Unmanned aerial vehicle (UAV)-based hyperspectral technology is an important tool for determining LNC. However, the intricate coupling between spectral information and nitrogen remains elusive. To address this, this study proposed an estimation method for LNC that integrates hybrid preferred features with deep learning modeling algorithms based on UAV hyperspectral imagery. The proposed approach leverages XGBoost, Pearson correlation coefficient (PCC), and a synergistic combination of both to identify the characteristic variables for LNC estimation. We then construct estimation models of LNC using statistical regression methods (partial least-squares regression (PLSR)) and machine learning algorithms (random forest (RF); deep neural networks (DNN)). The optimal model is utilized to map the spatial distribution of LNC at the field scale. The study was conducted at the National Agricultural Science and Technology Park, Guangzhou, located in Baiyun District of Guangdong, China. The results reveal that the combined PCC-XGBoost algorithm significantly enhances the accuracy of rice nitrogen inversion compared to the standalone screening approach. Notably, the model built with the DNN algorithm exhibits the highest predictive performance and demonstrates great potential in mapping the spatial distribution of LNC. This indicates the potential role of the proposed model in precision fertilization and the enhancement of nitrogen utilization efficiency in rice cultivation. The outcomes of this study offer a valuable reference for enhancing agricultural practices and sustainable crop management.

Funder

The Collaborative Innovation Center Project of Guangdong Academy of Agricultural Science

Key Technologies R&D Program of Guangdong Province

Guangdong Rural Science and Technology Commissioner Project

Publisher

MDPI AG

Reference33 articles.

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3. Cost-effective mitigation of nitrogen pollution from global croplands;Gu;Nature,2023

4. Simultaneous inversion method of nitrogen and phosphorus contents in rice leaves using CARS-RUN-ELM algorithm;Xu;Trans. CSAE,2022

5. Quantitative analysis and hyperspectral remote sensing of the nitrogen nutrition index in winter wheat;Liu;Int. J. Remote Sens.,2020

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