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- Title
SRT: A Spectral Reconstruction Network for GF-1 PMS Data Based on Transformer and ResNet.
- Authors
Mu, Kai; Zhang, Ziyuan; Qian, Yurong; Liu, Suhong; Sun, Mengting; Qi, Ranran
- Abstract
The time of acquiring remote sensing data was halved after the joint operation of Gao Fen-6 (GF-6) and Gao Fen-1 (GF-1) satellites. Meanwhile, GF-6 added four bands, including the "red-edge" band that can effectively reflect the unique spectral characteristics of crops. However, GF-1 data do not contain these bands, which greatly limits their application to crop-related joint monitoring. In this paper, we propose a spectral reconstruction network (SRT) based on Transformer and ResNet to reconstruct the missing bands of GF-1. SRT is composed of three modules: (1) The transformer feature extraction module (TFEM) fully extracts the correlation features between spectra. (2) The residual dense module (RDM) reconstructs local features and avoids the vanishing gradient problem. (3) The residual global construction module (RGM) reconstructs global features and preserves texture details. Compared with competing methods, such as AWAN, HRNet, HSCNN-D, and M2HNet, the proposed method proved to have higher accuracy by a margin of the mean relative absolute error (MRAE) and root mean squared error (RMSE) of 0.022 and 0.009, respectively. It also achieved the best accuracy in supervised classification based on support vector machine (SVM) and spectral angle mapper (SAM).
- Subjects
STANDARD deviations; SUPPORT vector machines; REMOTE sensing; FEATURE extraction
- Publication
Remote Sensing, 2022, Vol 14, Issue 13, p3163
- ISSN
2072-4292
- Publication type
Article
- DOI
10.3390/rs14133163