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AIM 2024 Challenge on Compressed Video Quality Assessment: Methods and Results

21 August 2024
Maksim Smirnov
Aleksandr Gushchin
Anastasia Antsiferova
Dmitry Vatolin
Radu Timofte
Ziheng Jia
Zicheng Zhang
Wei Sun
Jiaying Qian
Yuqin Cao
Yinan Sun
Yuxin Zhu
Xiongkuo Min
Guangtao Zhai
Kanjar De
Qing Luo
Ao-Xiang Zhang
Peng Zhang
Haibo Lei
Linyan Jiang
Yaqing Li
Wenhui Meng
Xiaoheng Tan
Haiqiang Wang
Xiaozhong Xu
Shan Liu
Zhenzhong Chen
Zhengxue Cheng
Jiahao Xiao
Jun Xu
Chenlong He
Qi Zheng
Ruoxi Zhu
Min Li
Yibo Fan
Zhengzhong Tu
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Abstract

Video quality assessment (VQA) is a crucial task in the development of video compression standards, as it directly impacts the viewer experience. This paper presents the results of the Compressed Video Quality Assessment challenge, held in conjunction with the Advances in Image Manipulation (AIM) workshop at ECCV 2024. The challenge aimed to evaluate the performance of VQA methods on a diverse dataset of 459 videos, encoded with 14 codecs of various compression standards (AVC/H.264, HEVC/H.265, AV1, and VVC/H.266) and containing a comprehensive collection of compression artifacts. To measure the methods performance, we employed traditional correlation coefficients between their predictions and subjective scores, which were collected via large-scale crowdsourced pairwise human comparisons. For training purposes, participants were provided with the Compressed Video Quality Assessment Dataset (CVQAD), a previously developed dataset of 1022 videos. Up to 30 participating teams registered for the challenge, while we report the results of 6 teams, which submitted valid final solutions and code for reproducing the results. Moreover, we calculated and present the performance of state-of-the-art VQA methods on the developed dataset, providing a comprehensive benchmark for future research. The dataset, results, and online leaderboard are publicly available at https://challenges.videoprocessing.ai/challenges/compressedvideo-quality-assessment.html.

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