A practical machine learning approach to retrieve land surface emissivity from space using visible and near-infrared to short-wave infrared data
文献类型: 外文期刊
第一作者: Li, Xiujuan
作者: Li, Xiujuan;Wu, Hua;Zhang, Xingxing;Cheng, Yuanliang;Wu, Hua;Ni, Li;Li, Xiujuan;Wu, Hua;Ni, Li;Zhang, Xingxing;Cheng, Yuanliang;Li, Jing;Fan, Dong
作者机构:
关键词: Land surface emissivity retrieval; Machine learning; Thermal infrared; Visible and near infrared; Short-wave infrared
期刊名称:INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION ( 影响因子:8.6; 五年影响因子:8.6 )
ISSN: 1569-8432
年卷期: 2024 年 134 卷
页码:
收录情况: SCI
摘要: Land surface emissivity (LSE) is a crucial variable in thermal infrared (TIR) remote sensing, providing unique information about the land surface across different channels. It is essential for applications such as surface energy budget estimation, resource exploration, and land cover change monitoring. However, current methods for retrieving LSE have certain limitations in terms of applicability or accuracy levels. Furthermore, the relative importance of various parameters in LSE retrieval studies remains unclear. To address these challenges, a practical and transferrable method has been proposed to retrieve LSE of different TIR channels using machine-learning technique. The proposed method uses visible and near-infrared (VNIR) as well as short-wave infrared (SWIR) data at the pixel scale to analyze key parameters for LSE retrieval and to estimate LSE for channels centered around 8.6 mu m, 11.0 mu m and 12.0 mu m. Importance analysis identified crucial variables for LSE retrieval, including reflectivity in channels of SWIR3 (similar to 2.13 mu m), RED (similar to 0.66 mu m) and BLUE (similar to 0.47 mu m), as well as the Enhanced Vegetation Index (EVI), Normalized Difference Water Index (NDWI), Normalized Difference Built-up Index (NDBI) and the view zenith angle (VZ). Compared to the data used in existing methods, the core variables offer a more comprehensive representation of surface information, potentially enhancing both the accuracy and usability of the proposed method. Using these core variables, LSE was retrieved across eleven study areas through a machine learning method. Cross-validation with MODIS products showed that the Root Mean Square Error (RMSE) of the estimated LSE is 0.02 for the channel around 8.6 mu m, and 0.01 for the channels around 11.0 mu m and 12.0 mu m, respectively. Direct-validation with in-situ measurements also demonstrated impressive retrieval accuracies in sandy areas. Furthermore, the model trained using 2019 data exhibited high retrieval accuracy when applied to data from 2017, highlighting its transferability across different time periods. Additionally, the proposed method produced promising results for LSE estimation using Landsat 8 imageries, indicating its potential for generating emissivity products from satellites with high spatial resolution but limited TIR channels.
分类号:
- 相关文献
作者其他论文 更多>>
-
Metabolomic and Transcriptomic Analyses of Flavonoid Biosynthesis in Different Colors of Soybean Seed Coats
作者:Fan, Yuanfang;Wang, Xianshu;Yang, Mei;Zhong, Xiaojuan;Zhou, Yonghang;Xiang, Chao;Fan, Yuanfang;Wang, Xianshu;Yang, Mei;Zhong, Xiaojuan;Zhou, Yonghang;Xiang, Chao;Hussain, Sajad;Tao, Lei;Li, Jing
关键词:soybean; flavonoid; transcriptome; metabolome; seed coat color
-
Evaluating Sustainable Development in the Middle and Lower Reaches of the Yellow River Basin Using Multiple Data Sources
作者:Lu, Yuefeng;Li, Jing;Song, Zhenqi;Lu, Yuefeng;Lu, Miao;Lu, Yuefeng;Lu, Miao
关键词:Rivers; Indexes; Sustainable development; Socioeconomics; Remote sensing; Water resources; Urban areas; Soil; Biological system modeling; Surface treatment; Ecological environment; influencing factors; middle and lower reaches of the Yellow River Basin; social economy; sustainable development
-
Soil microbiome mediates plant community productivity in grass-legume mixtures
作者:Li, Jing;Zhang, Wenbo;Yang, Xiaojiang;Jiang, Shenyi;Wang, Zhen;Jin, Ke;Li, Jing;Xu, Zhuwen;Yang, Xiaojiang;Jiang, Shenyi;Struik, Paul C.
关键词:Grass-legume ratios; Symbiosis; Mycorrhizal fungi; Nitrogen-fixing bacteria; Plant productivity
-
Thermostability improvement of the glucose oxidase from Penicillium amagasakiense for efficient antimicrobial performance through computer-aided molecular design
作者:Peng, Ying-Zhi;Zhu, Xiao-Lu;He, Xiao-Xiao;Chen, Yi-Hao;Yang, Le-Yun;Zhao, Wei-Guo;Wang, Jun;You, Shuai;Peng, Ying-Zhi;Zhu, Xiao-Lu;He, Xiao-Xiao;Chen, Yi-Hao;Yang, Le-Yun;Zhao, Wei-Guo;Wang, Jun;You, Shuai;Lv, Xiang;Li, Jing
关键词:Penicillium amagasakiense GOD; Computer-aided molecular design; Thermostability; Flexible region; Molecular dynamics simulation; Bacteriostasis
-
Carbon chain elongation microorganism stimulates caproate production from ethanol and acetate under applied voltage regulation
作者:Li, Jing;Tan, Hao;Xiong, Xiaolong;Luo, Xing;Liu, He;Zhang, Xuedong;Liu, He
关键词:carbon chain elongation; optimal system; caproate; metabolism pathways; microbial community
-
Application of selenium-engineered nanomaterials to paddy soil promote rice production by improving soil health
作者:Wang, Chuanxi;Cheng, Bingxu;Li, Jing;Li, Xiaona;Yue, Le;Cao, Xuesong;Ji, Yahui;Wang, Zhenyu;Wang, Chuanxi;Cheng, Bingxu;Li, Jing;Li, Xiaona;Yue, Le;Cao, Xuesong;Ji, Yahui;Wang, Zhenyu;Feng, Yanfang;Kah, Melanie;Fan, Zhanxi;Xing, Baoshan
关键词:
-
Soil organic matter enhanced the soil colloidal phosphorus via co-precipitation with Fe/Al in paddy soil
作者:Li, Jing;Xue, Lihong;Li, Jing;Xue, Lihong;Hu, Xin;Shi, Linlin
关键词:Colloidal phosphorus; Organic fertilizer; Organic carbon; Co-precipitates; Paddy soil