Abstract

To extend agricultural productivity by knowledge-based breeding and tailoring varieties to adapt to specific environmental conditions, it is imperative to improve our ability to acquire the dynamic changes of the crop’s phenotype under field conditions. Canopy leaf biomass (CLB) per ground area is one of the key crop phenotypic parameters in plant breeding. The most promising technique for effectively monitoring CLB is the hyperspectral vegetation index (VI). However, VI-based empirical models are limited by their poor stability and extrapolation difficulties when used to assess complex dynamic environments with different varieties, growth stages, and sites. It has been proven difficult to calibrate and validate some VI-based models. To address this problem, eight field experiments using eight wheat varieties were conducted during the period of 2003–2011 at four sites, and continuous wavelet transform (CWT) was applied to estimate CLB from large number of field experimental data. The analysis of 108 wavelet functions from all 15 wavelet families revealed that the best wavelet features for CLB in terms of wavelength (W) and scale (S) were observed in the near-infrared region and at high scales (7 and 8). The best wavelet-based model was derived from the Daubechies family (db), and was named db7 (W1197 nm, S8). The new model was more accurate ( = 0.67 and RRMSE = 27.26%) than a model obtained using the best existing VI ( = 0.54 and RRMSE = 34.71%). Furthermore, the stable performance of the optimal db7 wavelet feature was confirmed by its limited variation among the different varieties, growth stages, and sites, which confirmed the high stability of the CWT to estimate CLB with hyperspectral data. This study highlighted the potential of precision phenotyping to assess the dynamic genetics of complex traits, especially those not amenable to traditional phenotyping.

Highlights

  • A key component to maintain or even increase agricultural production is the development of genotyping and phenotyping technologies

  • When estimating Canopy leaf biomass (CLB) based on continuous wavelet transform (CWT), a near-infrared wavelength (780–1,350 nm) and at scale of 7 or 8 would be most effective

  • The results showed that the best model was db7 (W1197, S8), which had a high accuracy and low predictive performance (R2c = 0.75, R2v = 0.67 and relative root mean square error (RRMSE) = 27.26%), that was slightly higher than that of the commonly used mexh function (W1412, S8; R2c = 0.73, R2v = 0.68 and RRMSE = 23.63%)

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Summary

Introduction

A key component to maintain or even increase agricultural production is the development of genotyping and phenotyping technologies. That means genomics has been advancing very rapidly, traditional plant phenotyping lags far behind current genotyping technique (Houle et al, 2010) This phenotyping bottleneck is of particular severity because many traits of biological and agricultural importance developed under a complex dynamic environment (Busemeyer et al, 2013). Many scientists devoted to relieve this bottleneck They successfully developed the novel tool to represent the traditional phenotyping with low cost and high efficiency in greenhouse, for example, the high-throughput rice phenotyping facility (HRPF) (Yang et al, 2014). Some novel field phenotyping systems with multi-sensor were developed for extracting the crop high-throughput phenotype properties (Bai et al, 2016; Pandey et al, 2017)

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