Selecting Information Fusion Generative Adversarial Network for Remote-Sensing Image Cloud Removal
Hao Yang, Wenzong Jiang, Weifeng Liu, Ye Li, Baodi Liu
Abstract
The multi-temporal remote sensing cloud removal method has improved performance, but it lacks a screening mechanism during feature fusion, simply summing and fusing features from different temporal states. This results in the inclusion of unwanted clouds and redundant feature information, hindering the restoration of the landscape under the clouds. To address this, we propose a selective information fusion generative adversarial network (SIF-GAN) for remote sensing image cloud removal. SIF-GAN incorporates channel attention during feature extraction to capture important information in different channels and uses the selective information fusion network to assign weights to the feature information from other temporal states, selecting the crucial features for fusion. The feature of cloud-free regions in different temporal states is utilized maximally by the selection process to recover the image features under clouds. The results of the experiments show that SIF-GAN achieves superior cloud removal performance compared to other methods.