Publikation: Fine-Grained HDR Image Quality Assessment From Noticeably Distorted to Very High Fidelity
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High dynamic range (HDR) and wide color gamut (WCG) technologies significantly improve color reproduction compared to standard dynamic range (SDR) and standard color gamuts, resulting in more accurate, richer, and more immersive images. However, HDR increases data demands, posing challenges for bandwidth efficiency and compression techniques. Advances in compression and display technologies require more precise image quality assessment, particularly in the high-fidelity range where perceptual differences are subtle. To address this gap, we introduce AIC-HDR2025, the first such HDR dataset, comprising 100 test images generated from five HDR sources, each compressed using four codecs at five compression levels. It covers the high-fidelity range, from visible distortions to compression levels below the visually lossless threshold. A subjective study was conducted using the JPEG AIC-3 test methodology, combining plain and boosted triplet comparisons. In total, 34,560 ratings were collected from 151 participants across four fully controlled labs. The results confirm that AIC-3 enables precise HDR quality estimation, with 95% confidence intervals averaging a width of 0.27 at 1 JND. In addition, several recently proposed objective metrics were evaluated based on their correlation with subjective ratings. The dataset is publicly available at: https://github.com/jpeg-aic/AIC-HDR2025.
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JENADELEH, Mohsen, Jon SNEYERS, Davi LAZZAROTTO, Shima MOHAMMADI, Dominik KELLER, Atanas BOEV, Rakesh Rao RAMACHANDRA RAO, António PINHEIRO, Thomas RICHTER, Alexander RAAKE, Touradj EBRAHIMI, João ASCENSO, Dietmar SAUPE, 2025. Fine-Grained HDR Image Quality Assessment From Noticeably Distorted to Very High Fidelity. 17th International Conference on Quality of Multimedia Experience : QoMEX 2025. Madrid, 29. Sept. 2025 - 3. Okt. 2025. In: 17th International Conference on Quality of Multimedia Experience : QoMEX 2025. 2025BibTex
@inproceedings{Jenadeleh2025FineG-75286,
title={Fine-Grained HDR Image Quality Assessment From Noticeably Distorted to Very High Fidelity},
year={2025},
booktitle={17th International Conference on Quality of Multimedia Experience : QoMEX 2025},
author={Jenadeleh, Mohsen and Sneyers, Jon and Lazzarotto, Davi and Mohammadi, Shima and Keller, Dominik and Boev, Atanas and Ramachandra Rao, Rakesh Rao and Pinheiro, António and Richter, Thomas and Raake, Alexander and Ebrahimi, Touradj and Ascenso, João and Saupe, Dietmar}
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