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KonIQ++ : Boosting No-Reference Image Quality Assessment in the Wild by Jointly Predicting Image Quality and Defects

KonIQ++ : Boosting No-Reference Image Quality Assessment in the Wild by Jointly Predicting Image Quality and Defects

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SU, Shaolin, Vlad HOSU, Hanhe LIN, Yanning ZHANG, Dietmar SAUPE, 2021. KonIQ++ : Boosting No-Reference Image Quality Assessment in the Wild by Jointly Predicting Image Quality and Defects. The 32nd British Machine Vision Conference. Online, Nov 22, 2021 - Nov 25, 2021. In: The British Machine Vision Conference (BMVC), pp. 1-12

@inproceedings{Su2021KonIQ-56990, title={KonIQ++ : Boosting No-Reference Image Quality Assessment in the Wild by Jointly Predicting Image Quality and Defects}, url={https://www.bmvc2021-virtualconference.com/conference/papers/paper_0868.html}, year={2021}, booktitle={The British Machine Vision Conference (BMVC)}, pages={1--12}, author={Su, Shaolin and Hosu, Vlad and Lin, Hanhe and Zhang, Yanning and Saupe, Dietmar} }

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