Stereoscopic image quality assessment
6 papers with code • 0 benchmarks • 0 datasets
Benchmarks
These leaderboards are used to track progress in Stereoscopic image quality assessment
Most implemented papers
Adaboost Neural Network And Cyclopean View For No-reference Stereoscopic Image Quality Assessment
The benchmark LIVE 3D phase-I, phase-II, and IRCCyN/IVC 3D databases have been used to evaluate the performance of the proposed approach.
No-reference Stereoscopic Image Quality Predictor using Deep Features from Cyclopean Image
Taking this into account, this paper introduces a blind stereoscopic image quality measurement using synthesized cyclopean image and deep feature extraction.
A Multi-task convolutional neural network for blind stereoscopic image quality assessment using naturalness analysis
To do this, we compute naturalness-based features using a Natural Scene Statistics (NSS) model in the complex wavelet domain.
3D Saliency guided Deep Quality predictor for No-Reference Stereoscopic Images
The use of 3D technologies is growing rapidly, and stereoscopic imaging is usually used to display the 3D contents.
End-to-end deep multi-score model for No-reference stereoscopic image quality assessment
Unlike existing stereoscopic IQA measures which focus mainly on estimating a global human score, we suggest incorporating left, right, and stereoscopic objective scores to extract the corresponding properties of each view, and so forth estimating stereoscopic image quality without reference.
Towards Top-Down Stereo Image Quality Assessment via Stereo Attention
Stereo image quality assessment (SIQA) plays a crucial role in evaluating and improving the visual experience of 3D content.