A full reference quality assessment method with fused monocular and binocular features for stereo images
Xiaojuan Hu, Jinxin Bai, Chunyi Chen, Haiyang Yu

TL;DR
This paper introduces a method to assess the quality of stereo images by combining monocular and binocular features for better accuracy and reliability.
Contribution
The novelty lies in fusing monocular and binocular features using binocular competition and integration for stereo image quality assessment.
Findings
The proposed method shows good consistency in quality assessment across different stereo images.
It demonstrates robustness when compared to newer methods in the LIVE 3D IQA database.
The fusion of Gabor filter responses and disparity maps improves feature extraction for quality prediction.
Abstract
Aiming to automatically monitor and improve stereoscopic image and video processing systems, stereoscopic image quality assessment approaches are becoming more and more important as 3D technology gains popularity. We propose a full-reference stereoscopic image quality assessment method that incorporate monocular and binocular features based on binocular competition and binocular integration. To start, we create a three-channel RGB fused view by fusing Gabor filter bank responses and disparity maps. Then, using the monocular view and the RGB fusion view, respectively, we extract monocular and binocular features. To alter the local features in the binocular features, we simultaneously estimate the saliency of the RGB fusion image. Finally, the monocular and binocular quality scores are calculated based on the monocular and binocular features, and the quality scores of the stereo image…
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Taxonomy
TopicsImage and Video Quality Assessment · Advanced Image Fusion Techniques · Color Science and Applications
