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AIS 2024 Challenge on Video Quality Assessment of User-Generated Content: Methods and Results

24 April 2024
Marcos V. Conde
Saman Zadtootaghaj
Nabajeet Barman
Radu Timofte
Chenlong He
Qi Zheng
Ruoxi Zhu
Zhengzhong Tu
Haiqiang Wang
Xiang-Zhong Chen
Wenhui Meng
Xiang Pan
Huiying Shi
Han Zhu
Xiaozhong Xu
Lei Sun
Zhenzhong Chen
Sha Liu
Zicheng Zhang
Haoning Wu
Yingjie Zhou
Chunyi Li
Xiaohong Liu
Weisi Lin
Guangtao Zhai
Wei Sun
Y. Cao
Yanwei Jiang
Jun Jia
Zhichao Zhang
Zijian Chen
Weixia Zhang
Xiongkuo Min
Steve Goring
Zihao Qi
Chen Feng
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Abstract

This paper reviews the AIS 2024 Video Quality Assessment (VQA) Challenge, focused on User-Generated Content (UGC). The aim of this challenge is to gather deep learning-based methods capable of estimating the perceptual quality of UGC videos. The user-generated videos from the YouTube UGC Dataset include diverse content (sports, games, lyrics, anime, etc.), quality and resolutions. The proposed methods must process 30 FHD frames under 1 second. In the challenge, a total of 102 participants registered, and 15 submitted code and models. The performance of the top-5 submissions is reviewed and provided here as a survey of diverse deep models for efficient video quality assessment of user-generated content.

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