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arXiv 提交日期: 2026-07-06
📄 Abstract - Learning Flexible Generalization in Video Quality Assessment by Bringing Device and Viewing Condition Distributions

Video quality assessment (VQA) plays a critical role in optimizing video delivery systems. While numerous objective metrics have been proposed to approximate human perception, the perceived quality strongly depends on viewing conditions and display characteristics. Factors such as ambient lighting, display brightness, and resolution significantly influence the visibility of distortions. In this work, we address the question of the multi-screen quality assessment on mobile devices, as this area still tends to be under-covered. We introduce a first large-scale subjective dataset collected across more than different 300 Android devices, accompanied by metadata on viewing conditions and display properties. We propose a strategy for aggregated score extraction and adaptation of VQA models to device-specific quality estimation. Our results demonstrate that incorporating device and context information enables more accurate and flexible quality prediction, offering new opportunities for fine-grained optimization in streaming services. Ultimately, this work advances the development of perceptual quality models that bridge the gap between laboratory evaluations and the diverse conditions of real-world media consumption. We made the dataset and the code available at this https URL.

顶级标签: video machine learning data
详细标签: video quality assessment device adaptation viewing conditions multi-screen subjective dataset 或 搜索:

通过引入设备与观看条件分布实现视频质量评估的灵活泛化 / Learning Flexible Generalization in Video Quality Assessment by Bringing Device and Viewing Condition Distributions


1️⃣ 一句话总结

本文通过收集超过300种安卓设备上的大规模主观数据集,并结合观看环境和显示特性,提出了一种能够根据具体设备调整的视频质量评估方法,从而让质量预测更贴近真实使用场景,有助于视频服务进行更精细的优化。

源自 arXiv: 2607.04643