학술논문

Learning-Based Satisfied User Ratio Prediction for Symmetrically and Asymmetrically Compressed Stereoscopic Images
Document Type
Periodical
Source
IEEE MultiMedia MultiMedia, IEEE. 28(3):8-20 Sep, 2021
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
Signal Processing and Analysis
Image coding
Stereo image processing
Feature extraction
Distortion
Visualization
Image quality
Two dimensional displays
Predictive models
Transform coding
Regression tree analysis
stereoscopic image quality assessment
satisfied user ratio
picture-level just noticeable difference
symmetric stereoscopic compression
asymmetric stereoscopic compression
Language
ISSN
1070-986X
1941-0166
Abstract
The satisfied user ratio (SUR) for a given distortion level is the fraction of subjects that cannot perceive a quality difference between the original image and its compressed version. By predicting the SUR, one can determine the highest distortion level which allows to save bit rate while guaranteeing a good visual quality. We propose the first method to predict the SUR for symmetrically and asymmetrically compressed stereoscopic images. Unlike SUR prediction techniques for two-dimensional images and videos, our method exploits the properties of binocular vision. We first extract features that characterize image quality and image content. Then, we use gradient boosting decision trees to reduce the number of features and train a regression model that learns a mapping function from the features to the SUR values. Experimental results on the SIAT-JSSI and SIAT-JASI datasets show high SUR prediction accuracy for H.265 All-Intra and JPEG2000 symmetrically and asymmetrically compressed stereoscopic images.