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LERSGAN_RS_PAPER
Paper-structured LersGAN dataset rebuild for low-light remote sensing image enhancement.
- Paper: LersGAN: A GAN-Based Model for Low-Light Remote Sensing Image Enhancement
- GitHub: https://github.com/TianqiLi11/LersGAN
- Dataset: https://huggingface.co/datasets/cod-tdq/lersgan
Dataset Description
This dataset follows the dataset protocol described in the paper's dataset section. The training and validation splits are unpaired low-light and normal-light image pools. The test split contains paired normal-light remote-sensing images and two generated low-light sets:
RSDark1: standard low-light degradation with brightness scaling alpha in[0.2, 0.4]plus Gaussian sensor noise.RSDark2: extreme low-light degradation with brightness scaling alpha in[0.05, 0.2]plus Poisson-style shot noise and Gaussian read noise.
The paper reports aggregate selected counts, not exact per-source selected file lists. This rebuild records the available local reconstruction and is intended for LersGAN reproduction experiments.
Structure
.
βββ train/
β βββ low_light/
β βββ normal_light/
βββ val/
β βββ low_light/
β βββ normal_light/
βββ test/
βββ normal/
βββ RSDark1/
βββ RSDark2/
Counts
- Train: 800 low-light images and 900 normal-light images.
- Validation: 100 low-light images and 100 normal-light images.
- Test: 500 normal-light images, 500 RSDark1 images, and 500 RSDark2 images.
Citation
@article{li2025lersgan,
title = {LersGAN: A GAN-Based Model for Low-Light Remote Sensing Image Enhancement},
author = {Li, TianQi},
journal = {IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing},
year = {2025},
doi = {10.1109/JSTARS.2025.3608696},
publisher = {IEEE}
}
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