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DeepSpecN:A new hybrid method combining PROSPECT-PRO and Conv-Transformer to estimate leaf nitrogen content from leaf reflectance
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作者 Shuai Yang Anirudh Belwalkar +6 位作者 Dong Li Yufeng Ge Tao Cheng Fei Wu Longkang Peng Daoliang Li Kang Yu 《Plant Phenomics》 2025年第4期118-134,共17页
Accurate,non-destructive quantification of leaf nitrogen content(LNC)is crucial for monitoring crop health and growth.Traditional empirical methods require extensive in-situ data for training,while physically-based me... Accurate,non-destructive quantification of leaf nitrogen content(LNC)is crucial for monitoring crop health and growth.Traditional empirical methods require extensive in-situ data for training,while physically-based methods are limited by ill-posed inversion,and hybrid methods suffer from domain shift between in-situ and simulated data.To overcome these limitations,this study introduces DeepSpecN,a novel hybrid method for maize LNC estimation using leaf-scale hyperspectral bidirectional reflectance.Without requiring in-situ data for training,DeepSpecN combines four key components:continuous wavelet transform(CWT)for reducing specular reflection,PROSPECT-PRO for simulating training data,an improved Transformer model for feature learning,and a spectral similarity-based sample selection method for selecting more valuable training samples.DeepSpecN and other methods,including physically-based methods,non-parametric regression based hybrid methods,and parametric regression methods based on vegetation indices(VIs),were validated using bidirectional reflectance data from 1724 maize leaves.The results showed that,when trained on representative samples,DeepSpecN achieved the highest estimation accuracy among all the methods(RMSE=0.247 g/m^(2),R^(2)=0.665).The sample selection strategy mitigated the effects of domain shift by identifying representative training samples with high spectral similarity from the simulated database.Furthermore,the results showed that the Chlorophyll(Chl)-based empirical formulas estimated maize LNC more accurately than those based on leaf protein content.Moreover,the validation results on four different crop species confirm the generalizability of DeepSpecN.Our findings demonstrate the potential of hybrid methods that utilize bidirectional reflectance spectra,developed by addressing the domain shift issue,to improve the LNC estimation accuracy. 展开更多
关键词 Leaf nitrogen estimation Domain shift in machine learning Radiative transfer model Transformer architecture Hybrid physical-ai modelling Hyperspectral reflectance
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