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Blind Image Quality Assessment via Transformer Predicted Error Map and Perceptual Quality Token

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Blind Image Quality Assessment via Transformer Predicted Error Map and Perceptual Quality Token

Archi

Environment

$ pip install -r requirements.txt

$ conda env create -f environment.yaml

Datasets

In this work we use 6 datasets (LIVE, CSIQ, TID2013, KADID10K, LIVE challenge, KonIQ)

Training

  1. Pre-train model for EM.

    $ python train_pre.py
  2. Final model for score prediction.

    $ python train_final.py

Pretrained Models

Pretrained models will be released soon.

Visualization

1. Predicted Error Maps

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2. Perceptual Attention Maps

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Blind Image Quality Assessment via Transformer Predicted Error Map and Perceptual Quality Token

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  • Python 100.0%