Affiliation:
1. School of Opto-Electronic Engineering, Changchun University of Science and Technology, Changchun 130022, China
2. Zhongshan Institute of Changchun University of Science and Technology, Zhongshan 528437, China
Abstract
Space probes are always obstructed by floating objects in the atmosphere (clouds, haze, rain, etc.) during imaging, resulting in the loss of a significant amount of detailed information in remote sensing images and severely reducing the quality of the remote sensing images. To address the problem of detailed information loss in remote sensing images, we propose an end-to-end detail enhancement network to directly remove haze in remote sensing images, restore detailed information of the image, and improve the quality of the image. In order to enhance the detailed information of the image, we designed a multi-scale detail enhancement unit and a stepped attention detail enhancement unit, respectively. The former extracts multi-scale information from images, integrates global and local information, and constrains the haze to enhance the image details. The latter uses the attention mechanism to adaptively process the uneven haze distribution in remote sensing images from three dimensions: deep, middle and shallow. It focuses on effective information such as haze and high frequency to further enhance the detailed information of the image. In addition, we embed the designed parallel normalization module in the network to further improve the dehazing performance and robustness of the network. Experimental results on the SateHaze1k and HRSD datasets demonstrate that our method effectively handles remote sensing images obscured by various levels of haze, restores the detailed information of the images, and outperforms the current state-of-the-art haze removal methods.
Funder
Jilin Province Science and Technology Development Plan Project
Equipment Development Department of the Central Military Commission
Reference42 articles.
1. CNN-based super-resolution of hyperspectral images;Arun;IEEE Trans. Geosci. Remote Sens.,2020
2. SemiCDNet: A semisupervised convolutional neural network for change detection in high resolution remote-sensing images;Peng;IEEE Trans. Geosci. Remote Sens.,2020
3. Geological remote sensing interpretation using deep learning feature and an adaptive multisource data fusion network;Han;IEEE Trans. Geosci. Remote Sens.,2022
4. Nonlocal low-rank tensor completion for visual data;Zhang;IEEE Trans. Cybern.,2019
5. Pan, Z., Xu, J., Guo, Y., Hu, Y., and Wang, G. (2020). Deep learning segmentation and classification for urban village using a worldview satellite image based on U-Net. Remote Sens., 12.
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