Perceptual Quality Assessment of 360$^\circ$ Images Based on Generative Scanpath Representation
Xiangjie Sui, Hanwei Zhu, Xuelin Liu, Yuming Fang, Shiqi Wang, Zhou, Wang

TL;DR
This paper introduces a novel generative scanpath representation (GSR) for 360-degree image quality assessment, accounting for diverse viewing behaviors and conditions, leading to more human-like quality predictions.
Contribution
It proposes a new GSR method that captures varied perceptual experiences under different viewing conditions for improved 360° image quality assessment.
Findings
High consistency with human perception in quality prediction
Effective handling of locally distorted 360° images
Robust across varied viewing conditions
Abstract
Despite substantial efforts dedicated to the design of heuristic models for omnidirectional (i.e., 360) image quality assessment (OIQA), a conspicuous gap remains due to the lack of consideration for the diversity of viewing behaviors that leads to the varying perceptual quality of 360 images. Two critical aspects underline this oversight: the neglect of viewing conditions that significantly sway user gaze patterns and the overreliance on a single viewport sequence from the 360 image for quality inference. To address these issues, we introduce a unique generative scanpath representation (GSR) for effective quality inference of 360 images, which aggregates varied perceptual experiences of multi-hypothesis users under a predefined viewing condition. More specifically, given a viewing condition characterized by the starting point of viewing and exploration…
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Taxonomy
TopicsImage and Video Quality Assessment · Visual Attention and Saliency Detection · Advanced Image Fusion Techniques
