MMNov 30, 2018

Hybrid Distortion Aggregated Visual Comfort Assessment for Stereoscopic Image Retargeting

arXiv:1811.12687v11 citations
Originality Incremental advance
AI Analysis

This work addresses visual comfort assessment for stereoscopic media, an incremental improvement in a domain-specific area with limited prior research.

The authors tackled the problem of assessing visual comfort in stereoscopic image retargeting by proposing a hybrid distortion aggregated scheme, which achieved superior performance compared to state-of-the-art methods on three databases.

Visual comfort is a quite important factor in 3D media service. Few research efforts have been carried out in this area especially in case of 3D content retargeting which may introduce more complicated visual distortions. In this paper, we propose a Hybrid Distortion Aggregated Visual Comfort Assessment (HDA-VCA) scheme for stereoscopic retargeted images (SRI), considering aggregation of hybrid distortions including structure distortion, information loss, binocular incongruity and semantic distortion. Specifically, a Local-SSIM feature is proposed to reflect the local structural distortion of SRI, and information loss is represented by Dual Natural Scene Statistics (D-NSS) feature extracted from the binocular summation and difference channels. Regarding binocular incongruity, visual comfort zone, window violation, binocular rivalry, and accommodation-vergence conflict of human visual system (HVS) are evaluated. Finally, the semantic distortion is represented by the correlation distance of paired feature maps extracted from original stereoscopic image and its retargeted image by using trained deep neural network. We validate the effectiveness of HDA-VCA on published Stereoscopic Image Retargeting Database (SIRD) and two stereoscopic image databases IEEE-SA and NBU 3D-VCA. The results demonstrate HDA-VCA's superior performance in handling hybrid distortions compared to state-of-the-art VCA schemes.

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