IEEE Open Journal of Circuits and Systems (Jan 2021)

Multi-Feature 360 Video Quality Estimation

  • Roberto G. de A. Azevedo,
  • Neil Birkbeck,
  • Ivan Janatra,
  • Balu Adsumilli,
  • Pascal Frossard

DOI
https://doi.org/10.1109/OJCAS.2021.3073891
Journal volume & issue
Vol. 2
pp. 338 – 349

Abstract

Read online

We propose a new method for the visual quality assessment of 360-degree (omnidirectional) videos. The proposed method is based on computing multiple spatio-temporal objective quality features on viewports extracted from 360-degree videos. A new model is learnt to properly combine these features into a metric that closely matches subjective quality scores. The main motivations for the proposed approach are that: 1) quality metrics computed on viewports better captures the user experience than metrics computed on the projection domain; 2) the use of viewports easily supports different projection methods being used in current 360-degree video systems; and 3) no individual objective image quality metric always performs the best for all types of visual distortions, while a learned combination of them is able to adapt to different conditions. Experimental results, based on both the largest available 360-degree videos quality dataset and a cross-dataset validation, demonstrate that the proposed metric outperforms state-of-the-art 360-degree and 2D video quality metrics.

Keywords