Subjective and Objective Quality Assessment Methods of Stereoscopic Videos with Visibility Affecting Distortions
Sria Biswas, Balasubramanyam Appina, Priyanka Kokil, Sumohana S, Channappayya

TL;DR
This paper introduces a new stereoscopic video dataset with fog and haze distortions, and develops a no-reference quality assessment model based on natural scene statistics and perceptual deviation measures, validated across multiple datasets.
Contribution
The work provides a novel stereoscopic video dataset with realistic distortions and proposes a new objective quality assessment model that is distortion discriminable and performs well across datasets.
Findings
The proposed model accurately predicts stereoscopic video quality.
It outperforms existing 2D and 3D quality assessment algorithms.
The dataset enables realistic evaluation of stereoscopic video quality.
Abstract
We present two major contributions in this work: 1) we create a full HD resolution stereoscopic (S3D) video dataset comprised of 12 reference and 360 distorted videos. The test stimuli are produced by simulating the five levels of fog and haze ambiances on the pristine left and right video sequences. We perform subjective analysis on the created video dataset with 24 viewers and compute Difference Mean Opinion Scores (DMOS) as quality representative of the dataset, 2) an Opinion Unaware (OU) and Distortion Unaware (DU) video quality assessment model is developed for S3D videos. We construct cyclopean frames from the individual views of an S3D video and partition them into nonoverlapping blocks. We analyze the Natural Scene Statistics (NSS) of all patches of pristine and test videos, and empirically model the NSS features with Univariate Generalized Gaussian Distribution (UGGD). We…
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Taxonomy
TopicsImage and Video Quality Assessment · Advanced Optical Imaging Technologies · Video Coding and Compression Technologies
