No-Reference Quality Assessment for 360-degree Images by Analysis of Multi-frequency Information and Local-global Naturalness
Wei Zhou, Jiahua Xu, Qiuping Jiang, Zhibo Chen

TL;DR
This paper introduces a novel no-reference quality assessment method for 360-degree images that leverages multi-frequency information and local-global naturalness, inspired by human visual system characteristics, to better predict perceived image quality.
Contribution
It presents the first no-reference omnidirectional image quality assessment method combining multi-frequency analysis and natural scene statistics, tailored for VR content viewing.
Findings
Outperforms state-of-the-art methods on public databases.
Effectively captures multi-frequency information relevant to human perception.
Utilizes local and global naturalness features for improved accuracy.
Abstract
360-degree/omnidirectional images (OIs) have achieved remarkable attentions due to the increasing applications of virtual reality (VR). Compared to conventional 2D images, OIs can provide more immersive experience to consumers, benefitting from the higher resolution and plentiful field of views (FoVs). Moreover, observing OIs is usually in the head mounted display (HMD) without references. Therefore, an efficient blind quality assessment method, which is specifically designed for 360-degree images, is urgently desired. In this paper, motivated by the characteristics of the human visual system (HVS) and the viewing process of VR visual contents, we propose a novel and effective no-reference omnidirectional image quality assessment (NR OIQA) algorithm by Multi-Frequency Information and Local-Global Naturalness (MFILGN). Specifically, inspired by the frequency-dependent property of visual…
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Taxonomy
TopicsImage and Video Quality Assessment · Visual Attention and Saliency Detection · Advanced Image Fusion Techniques
