2013 - 2017, Martin Cadik (cadikm@centrum.cz, http://cadik.posvete.cz/)
developers: Martin Cadik, Robert Herzog, Peter Harman, Lukas Teuer
In this work, we present a new data-driven full-reference image quality metric which outperforms current state-of-the-art metrics. The metric was trained on subjective ground truth data combining two publicly available datasets. For the sake of completeness we create a new testing synthetic dataset including experimentally measured subjective distortion maps. Finally, using the same machine-learning framework we optimize the parameters of popular existing metrics.
If you find LPLD project useuful, please acknowledge it by citing the following paper:
@article{ cadik13learning,
author = {Martin {\v{C}}ad\'{i}k and
Robert Herzog and
Rafal Mantiuk and
Radoslaw Mantiuk and
Karol Myszkowski and
Hans{-}Peter Seidel},
title = {Learning to Predict Localized Distortions in Rendered Images},
journal = {Comput. Graph. Forum},
year = {2013},
volume = {32},
number = {7},
pages = {401--410},
doi = {10.1111/cgf.12248},
}
[Paper (pdf)] [Supplementary Material (html)] [Presentation slides (pdf)]