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基于生成对抗网络的烟田土壤有机质含量高光谱估测

夏雨 王勉 武洪艳 高加明 徐锐 郭利 程雪莹 王志坤 张继光 胡晓

中国烟草科学2025,Vol.46Issue(1):106-115,10.
中国烟草科学2025,Vol.46Issue(1):106-115,10.DOI:10.13496/j.issn.1007-5119.2025.01.014

基于生成对抗网络的烟田土壤有机质含量高光谱估测

Hyperspectral Estimation of Soil Organic Matter Content in Tobacco Fields Based on Generated Adversarial Network

夏雨 1王勉 2武洪艳 3高加明 2徐锐 4郭利 4程雪莹 1王志坤 1张继光 5胡晓1

作者信息

  • 1. 山东农业大学信息科学与工程学院,山东 泰安 271018
  • 2. 湖北省烟草公司,武汉 430030
  • 3. 天津众远实业有限公司,天津 300467
  • 4. 湖北省烟草公司襄阳市公司,湖北 襄阳 441003
  • 5. 中国农业科学院烟草研究所,青岛 266101
  • 折叠

摘要

Abstract

Soil organic matter(SOM)is a crucial indicator for evaluating soil fertility and plays an important role in tobacco growth.In this study,soil samples from tobacco fields in Hubei Province were collected,and generative adversarial networks(GAN)were used to generate pseudo-samples to expand the modeling set.Reflectance data were preprocessed by using standard normal variate(SNV),multiplicative scatter correction(MSC),first derivative(FD),logarithm reciprocal(LR),and logarithm reciprocal first derivative(LRFD).Sensitive spectral bands were selected based on pearson correlation coefficients.Partial least squares regression(PLSR),random forest(RF),and back propagation neural networks(BPNN)were then used to construct SOM estimation models for the tobacco fields.Results showed as the follows(1)After the GAN model was trained for 25 000 times,the generated pseudo samples showed similar characteristics and rules of real samples.(2)After MSC+LRFD preprocessing,the correlation between full band spectral reflectance and SOM content was increased,with the value of the correlation coefficient reaching up to 0.66.(3)When the pseudo-sample quantity reached 150%,after feature band selection,the MSC+BPNN model showed the best validation accuracy with a coefficient of determination(R2),relative percent difference(RPD),and root mean square error(RMSE)of 0.80,2.22,and 3.18,respectively.Compared to the optimal model constructed from the original dataset,the model accuracy improved by 9.59%.The results from this study confirmed that adding GAN-generated pseudo-samples to the modeling set effectively enhanced model estimation performance,providing a new approach for SOM estimation in complex mountainous tobacco fields.

关键词

土壤有机质/高光谱/生成式对抗网络/反向传播神经网络

Key words

soil organic matter/hyperspectral/generative adversarial networks/back propagation neural networks

分类

农业科技

引用本文复制引用

夏雨,王勉,武洪艳,高加明,徐锐,郭利,程雪莹,王志坤,张继光,胡晓..基于生成对抗网络的烟田土壤有机质含量高光谱估测[J].中国烟草科学,2025,46(1):106-115,10.

基金项目

湖北省烟草公司科技项目(027Y2022-004) (027Y2022-004)

中国农业科学院科技创新工程(ASTIP-TRIC06) (ASTIP-TRIC06)

中国烟草科学

OA北大核心

1007-5119

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