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Spatial Attention-Based Non-Reference Perceptual Quality Prediction Network for Omnidirectional Images

Li Yang, Mai Xu, Xin Deng, Bo Feng

202131 citationsDOI

Abstract

Due to the strong correlation between visual attention and perceptual quality, many methods attempt to use human saliency information for image quality assessment. Although this mechanism can get good performance, the networks require human saliency labels, which is not easily accessible for omnidirectional images (ODI). To alleviate this issue, we propose a spatial attention-based perceptual quality prediction network for non-reference quality assessment on ODIs (SAP-net). Without any human saliency labels, our network can adaptively estimate human perceptual quality on impaired ODIs through a self-attention manner, which significantly promotes the prediction performance of quality scores. Moreover, our method greatly reduces the computational complexity in quality assessment task on ODIs. Extensive experiments validate that our network outperforms 9 state-of-the-art methods for quality assessment on ODIs. The dataset and code have been available on https://github.com/yanglixiaoshen/SAP-Net.

Topics & Concepts

Computer sciencePerceptionQuality (philosophy)Artificial intelligenceImage qualityTask (project management)Omnidirectional antennaCode (set theory)Attention networkQuality assessmentPattern recognition (psychology)Data miningComputer visionImage (mathematics)Evaluation methodsReliability engineeringSet (abstract data type)EngineeringBiologyProgramming languagePhilosophySystems engineeringAntenna (radio)EpistemologyTelecommunicationsNeuroscienceImage and Video Quality AssessmentVisual Attention and Saliency DetectionAdvanced Image Fusion Techniques
Spatial Attention-Based Non-Reference Perceptual Quality Prediction Network for Omnidirectional Images | Litcius