Abstract

Real-time and accurate monitoring of nitrogen content in crops is crucial for precision agriculture. Proximal sensing is the most common technique for monitoring crop traits, but it is often influenced by soil background and shadow effects. However, few studies have investigated the classification of different components of crop canopy, and the performance of spectral and textural indices from different components on estimating leaf nitrogen content (LNC) of wheat remains unexplored. This study aims to investigate a new feature extracted from near-ground hyperspectral imaging data to estimate precisely the LNC of wheat. In field experiments conducted over two years, we collected hyperspectral images at different rates of nitrogen and planting densities for several varieties of wheat throughout the growing season. We used traditional methods of classification (one unsupervised and one supervised method), spectral analysis (SA), textural analysis (TA), and integrated spectral and textural analysis (S-TA) to classify the images obtained as those of soil, panicles, sunlit leaves (SL), and shadowed leaves (SHL). The results show that the S-TA can provide a reasonable compromise between accuracy and efficiency (overall accuracy = 97.8%, Kappa coefficient = 0.971, and run time = 14 min), so the comparative results from S-TA were used to generate four target objects: the whole image (WI), all leaves (AL), SL, and SHL. Then, those objects were used to determine the relationships between the LNC and three types of indices: spectral indices (SIs), textural indices (TIs), and spectral and textural indices (STIs). All AL-derived indices achieved more stable relationships with the LNC than the WI-, SL-, and SHL-derived indices, and the AL-derived STI was the best index for estimating the LNC in terms of both calibration (Rc2 = 0.78, relative root mean-squared error (RRMSEc) = 13.5%) and validation (Rv2 = 0.83, RRMSEv = 10.9%). It suggests that extracting the spectral and textural features of all leaves from near-ground hyperspectral images can precisely estimate the LNC of wheat throughout the growing season. The workflow is promising for the LNC estimation of other crops and could be helpful for precision agriculture.

Highlights

  • To address the above-mentioned gaps in research, we investigated a new feature extracted from near-ground hyperspectral imaging data to estimate precisely the Leaf nitrogen content (LNC) of wheat

  • Panicles could not be distinguished from the other components by spectral classification index (SCI) (Figure 4d and Table 3)

  • Textural analysis based on the Mathematical morphology (MM) was able to extract panicles in the heading stage (Figure 5)

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Summary

Introduction

Nitrogen is a crucial nutrient in crop growth that helps optimize fertilization management [1,2]. The reasonable application of nitrogen as fertilizer can improve the efficiency of its use as well as the yield and quality of the crop, but it can reduce resource waste and environmental pollution [3]. Leaf nitrogen content (LNC) is an important indicator of the application of nitrogen as fertilizer in the early stages of crop growth [4,5], and it is intimately related to the quality of the final grain in later stages of growth [6,7]. The accurate and timely quantification of LNC is a prerequisite for Remote Sens.

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