Datasets:
license: mit
task_categories:
- image-to-image
tags:
- image-super-resolution
- diffusion
- pytorch
configs:
- config_name: imagenet512
data_files: imagenet512/**
- config_name: RealSR
data_files: RealSR/**
LPNSR: Prior-Enhanced Diffusion Image Super-Resolution Dataset
This repository contains the evaluation datasets and testing data associated with the paper LPNSR: Prior-Enhanced Diffusion Image Super-Resolution via LR-Guided Noise Prediction.
Project Links
- Paper: arXiv:2603.21045
- GitHub Repository: Faze-Hsw/LPNSR
Dataset Description
This dataset collection is used to evaluate image super-resolution models on both synthetic and complex real-world degradations. It contains pairs of Low-Quality (LQ) and Ground-Truth (GT) high-resolution images.
The LPNSR approach utilizes an LR-guided multi-input-aware noise predictor instead of random Gaussian noise for partial diffusion initialization, allowing for efficient 4-step inference.
Sub-Datasets Included:
imagenet512: Contains 3,000 synthetic image pairs used for validation/testing.RealSR: Contains 100 image pairs featuring real-world degradations captured from actual camera sensors.RealSet80: Contains 80 real-world highly degraded images without Ground-Truth references.
How to Use
Load the paired super-resolution datasets (imagenet512, RealSR) using the Hugging Face datasets library:
from datasets import load_dataset
# Load the imagenet512 subset
dataset_imagenet = load_dataset("mirpri/LPNSR-dataset", name="imagenet512")
# Load the RealSR subset
dataset_realsr = load_dataset("mirpri/LPNSR-dataset", name="RealSR")
# Check the properties of the first pair
print(dataset_imagenet['train'][0])
# Keys will map to 'image' (for LQ) and 'ground_truth' (for GT).
Citation
If you find this dataset or the LPNSR framework useful, please cite our paper:
@article{lpnsr2026,
title={LPNSR: Prior-Enhanced Diffusion Image Super-Resolution via LR-Guided Noise Prediction},
author={Huang, Shuwei and Liu, Shizhuo and Wei, Zijun},
journal={arXiv preprint arXiv:2603.21045},
year={2026},
eprint={2603.21045},
archivePrefix={arXiv},
primaryClass={cs.CV}
}
Acknowledgement
This project is based on ResShift, BasicSR, SwinIR, and Real-ESRGAN.