CompressedVQA-HDR: Generalized Full-reference and No-reference Quality Assessment Models for Compressed High Dynamic Range Videos
Wei Sun, Linhan Cao, Kang Fu, Dandan Zhu, Jun Jia, Menghan Hu, Xiongkuo Min, Guangtao Zhai

TL;DR
This paper introduces CompressedVQA-HDR, a novel framework for assessing the quality of compressed HDR videos using transformer-based models, achieving state-of-the-art results and winning a major challenge.
Contribution
It presents the first generalized full-reference and no-reference HDR video quality assessment models employing Swin Transformer and SigLip 2, with innovative training strategies for limited HDR data.
Findings
Achieved state-of-the-art performance on HDR VQA datasets.
Won first place in the FR track of the IEEE ICME 2025 challenge.
Effective cross-dataset training strategies enhance model generalization.
Abstract
Video compression is a standard procedure applied to all videos to minimize storage and transmission demands while preserving visual quality as much as possible. Therefore, evaluating the visual quality of compressed videos is crucial for guiding the practical usage and further development of video compression algorithms. Although numerous compressed video quality assessment (VQA) methods have been proposed, they often lack the generalization capability needed to handle the increasing diversity of video types, particularly high dynamic range (HDR) content. In this paper, we introduce CompressedVQA-HDR, an effective VQA framework designed to address the challenges of HDR video quality assessment. Specifically, we adopt the Swin Transformer and SigLip 2 as the backbone networks for the proposed full-reference (FR) and no-reference (NR) VQA models, respectively. For the FR model, we…
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Taxonomy
TopicsImage and Video Quality Assessment · Image Enhancement Techniques · Advanced Image Processing Techniques
