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A Unified Interface for IQA Datasets

This repository contains a unified interface for downloading and loading 20 popular Image Quality Assessment (IQA) datasets. We provide codes for both general Python and PyTorch.

Citation

This repository is part of our Bayesian IQA project where we present an overview of IQA methods from a Bayesian perspective. More detailed summaries of both IQA models and datasets can be found in this interactive webpage.

If you find our project useful, please cite our paper

@article{duanmu2021biqa,
        author = {Duanmu, Zhengfang and Liu, Wentao and Wang, Zhongling and Wang, Zhou},
        title = {Quantifying Visual Image Quality: A Bayesian View},
        journal = {Annual Review of Vision Science},
        volume = {7},
        number = {1},
        pages = {437-464},
        year = {2021}
        }

Supported Datasets

Dataset Dis Img Ref Img MOS DMOS
LIVE
A57
LIVE_MD
MDID2013
CSIQ
KADID-10k (Note) ~~~~
TID2008
TID2013
CIDIQ_MOS100
CIDIQ_MOS50
MDID2016
SDIVL
MDIVL
Toyama
PDAP-HDDS
VCLFER
LIVE_Challenge
CID2013
KonIQ-10k
SPAQ
Waterloo_Exploration
KADIS-700k (code only)

Basic Usage

  1. Prerequisites

    pip install wget
    
  2. General Python (please refer demo.py)

    from load_dataset import load_dataset
    dataset = load_dataset("LIVE")
    
  3. PyTorch (please refer demo_pytorch.py)

    from load_dataset import load_dataset_pytorch
    dataset = load_dataset_pytorch("LIVE")
    

Advanced Usage

  1. General Python (please refer demo.py)

    from load_dataset import load_dataset
    dataset = load_dataset("LIVE", dataset_root="data", attributes=["dis_img_path", "dis_type", "ref_img_path", "score"], download=True)
    
  2. PyTorch (please refer demo_pytorch.py)

    from load_dataset import load_dataset_pytorch
    transform = transforms.Compose([transforms.RandomCrop(size=64), transforms.ToTensor()])
    dataset = load_dataset_pytorch("LIVE", dataset_root="data", attributes=["dis_img_path", "dis_type", "ref_img_path", "score"], download=True, transform=transform)
    

TODO

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