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Main Authors: Zheng, Qi, Fan, Yibo, Huang, Leilei, Zhu, Tianyu, Liu, Jiaming, Hao, Zhijian, Xing, Shuo, Chen, Chia-Ju, Min, Xiongkuo, Bovik, Alan C., Tu, Zhengzhong
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.04508
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author Zheng, Qi
Fan, Yibo
Huang, Leilei
Zhu, Tianyu
Liu, Jiaming
Hao, Zhijian
Xing, Shuo
Chen, Chia-Ju
Min, Xiongkuo
Bovik, Alan C.
Tu, Zhengzhong
author_facet Zheng, Qi
Fan, Yibo
Huang, Leilei
Zhu, Tianyu
Liu, Jiaming
Hao, Zhijian
Xing, Shuo
Chen, Chia-Ju
Min, Xiongkuo
Bovik, Alan C.
Tu, Zhengzhong
contents Video quality assessment (VQA) is an important processing task, aiming at predicting the quality of videos in a manner highly consistent with human judgments of perceived quality. Traditional VQA models based on natural image and/or video statistics, which are inspired both by models of projected images of the real world and by dual models of the human visual system, deliver only limited prediction performances on real-world user-generated content (UGC), as exemplified in recent large-scale VQA databases containing large numbers of diverse video contents crawled from the web. Fortunately, recent advances in deep neural networks and Large Multimodality Models (LMMs) have enabled significant progress in solving this problem, yielding better results than prior handcrafted models. Numerous deep learning-based VQA models have been developed, with progress in this direction driven by the creation of content-diverse, large-scale human-labeled databases that supply ground truth psychometric video quality data. Here, we present a comprehensive survey of recent progress in the development of VQA algorithms and the benchmarking studies and databases that make them possible. We also analyze open research directions on study design and VQA algorithm architectures. Github link: https://github.com/taco-group/Video-Quality-Assessment-A-Comprehensive-Survey.
format Preprint
id arxiv_https___arxiv_org_abs_2412_04508
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Video Quality Assessment: A Comprehensive Survey
Zheng, Qi
Fan, Yibo
Huang, Leilei
Zhu, Tianyu
Liu, Jiaming
Hao, Zhijian
Xing, Shuo
Chen, Chia-Ju
Min, Xiongkuo
Bovik, Alan C.
Tu, Zhengzhong
Image and Video Processing
Computer Vision and Pattern Recognition
Video quality assessment (VQA) is an important processing task, aiming at predicting the quality of videos in a manner highly consistent with human judgments of perceived quality. Traditional VQA models based on natural image and/or video statistics, which are inspired both by models of projected images of the real world and by dual models of the human visual system, deliver only limited prediction performances on real-world user-generated content (UGC), as exemplified in recent large-scale VQA databases containing large numbers of diverse video contents crawled from the web. Fortunately, recent advances in deep neural networks and Large Multimodality Models (LMMs) have enabled significant progress in solving this problem, yielding better results than prior handcrafted models. Numerous deep learning-based VQA models have been developed, with progress in this direction driven by the creation of content-diverse, large-scale human-labeled databases that supply ground truth psychometric video quality data. Here, we present a comprehensive survey of recent progress in the development of VQA algorithms and the benchmarking studies and databases that make them possible. We also analyze open research directions on study design and VQA algorithm architectures. Github link: https://github.com/taco-group/Video-Quality-Assessment-A-Comprehensive-Survey.
title Video Quality Assessment: A Comprehensive Survey
topic Image and Video Processing
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.04508