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基于深度学习的热红外遥感地表温度和发射率反演优化研究

马六 毛克彪 郭中华 袁紫晋

自然资源遥感2026,Vol.38Issue(2):79-88,10.
自然资源遥感2026,Vol.38Issue(2):79-88,10.DOI:10.6046/zrzyyg.2025069

基于深度学习的热红外遥感地表温度和发射率反演优化研究

Deep learning-based inversion optimization for land surface temperature and emissivity obtained from thermal infrared remote sensing data

马六 1毛克彪 2郭中华 1袁紫晋2

作者信息

  • 1. 宁夏大学电子与电气工程学院,银川 750021
  • 2. 中国农业科学院农业资源与农业区划研究所,北京 100081
  • 折叠

摘要

Abstract

The land surface temperature(LST)and land surface emissivity(LSE)derived from the moderate-resolution imaging spectroradiometer(MODIS)data have been widely used for climate monitoring,environmental assessment,and prevention of agricultural disasters.However,their accuracy is insufficient due to the influence of factors such as cloud,aerosol,precipitable water vapor,and mixed pixels.To enhance the inversion accuracy of both LST and LSE,this study proposed a deep learning-based iterative optimization strategy.First,the radiative transfer equation was used for physical logic reasoning to ensure the input and output variables for deep learning meet the parameter inversion theory and judgment conditions.Second,MODTRAN4 was employed to simulate and iteratively optimize the MODIS thermal infrared bands.The feasibility of the optimization was verified,and the optimal band combination was selected.Third,the brightness temperature,LST,and LSE data of five MODIS thermal infrared bands were collected.An iterative fine-tuning strategy was constructed based on the Adam optimizer to gradually optimize the deep learning neural network,thereby obtaining more accurate LST and LSE products.Finally,the optimized network was retrained and applied to the inversion of the MODIS remote sensing data of North America.In the experiments using simulated data,compared to the 4-band combination,the 5-band input for LST inversion led to a mean absolute error(MAE)decreasing from 0.747 5 K to 0.583 5 K and a Pearson correlation coefficient(PCC)increasing from 0.997 7 to 0.998 6.Meanwhile,the LSE inversion accuracy was also significantly enhanced.The optimized disturbance simulation data exhibited a minimal error compared to the actual raw data.The optimization of the actual data shows that through iterative fine-tuning,the LST inversion yielded a MAE decreasing from 1.823 7 K to 1.154 3 K and a PCC increasing from 0.980 3 to 0.991 8.Measured data were then introduced to validate the simulation data,with MAE decreasing from 2.180 4 K to 1.828 0 K and PCC increasing from 0.913 5 to 0.941 8.These results suggest that the simulation data are more close to actual values,further confirming the optimization effects of the strategy.Overall,this study provides reliable data support for fields such as climate and environment,holding broad application prospects.

关键词

地表温度/地表发射率/深度学习/迭代优化策略/辐射传输方程

Key words

land surface temperature(LST)/land surface emissivity(LSE)/deep learning/iterative optimization strategy/radiative transfer equation

分类

信息技术与安全科学

引用本文复制引用

马六,毛克彪,郭中华,袁紫晋..基于深度学习的热红外遥感地表温度和发射率反演优化研究[J].自然资源遥感,2026,38(2):79-88,10.

基金项目

宁夏科技厅自然科学基金重点项目"人工智能地表温度遥感参数反演范式模型研究"(编号:2024AC02032)和中央级公益性科研院所基本科研业务费专项"人工智能农业和地学应用研究"(编号:Y2025YC86)共同资助. (编号:2024AC02032)

自然资源遥感

2097-034X

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