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Ge Song

Wuhan University

Wuhan University

Economics and Management School

Wuhan, Hubei 430072

China

SCHOLARLY PAPERS

3

DOWNLOADS

283

TOTAL CITATIONS

1

Scholarly Papers (3)

Rtformer: Radiative Transfer Model-Coupled Transformer for Cloud Removal in Optical Remote Sensing Imagery

Number of pages: 84 Posted: 22 Jan 2025
Wuhan University, Wuhan University, Wuhan University, Wuhan University, Wuhan University, Wuhan University and Wuhan University
Downloads 123 (590,717)

Abstract:

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Cloud removal, Radiative transfer model (RTM), Physical model-driven deep learning, Transformer

Rtformer: Radiative Transfer Model-Coupled Transformer for Cloud Removal in Optical Remote Sensing Imagery

Number of pages: 47 Posted: 19 Jun 2024
Wuhan University, Wuhan University, Wuhan University, Wuhan University, Wuhan University, Wuhan University and Wuhan University
Downloads 52 (1,060,784)

Abstract:

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Cloud removal, Radiative transfer model (RTM), Physical model-driven deep learning, Transformer

2.

72-Hour Real-Time Forecasting of Ambient Pm2.5 by Hybrid Graph Deep Neural Network with Aggregated Neighborhood Spatiotemporal Information

Number of pages: 22 Posted: 12 Feb 2023
Wuhan University, Wuhan University, Tsinghua University, Wuhan University, Wuhan University, affiliation not provided to SSRN, Wuhan University, Wuhan University, Wuhan University and Wuhan University
Downloads 57 (1,000,027)

Abstract:

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PM2.5, Hybrid graph deep neural network, Physical mechanism, AOD

3.

24 Hour Prediction of Pm2.5 Concentrations by Combining Empirical Mode Decomposition and Bidirectional Long Short-Term Memory Neural Network

Number of pages: 35 Posted: 09 Dec 2021
Wuhan University, Wuhan University, Tsinghua University, Wuhan University, Wuhan University, Wuhan University, Wuhan University and Wuhan University
Downloads 51 (1,063,489)
Citation 1

Abstract:

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PM2.5, Deep Learning, Empirical mode decomposition, Bidirectional long and short-term memory neural network