Abstract

Super-resolution (SR) plays an important role in the processing and display of mixed-resolution (MR) stereoscopic images. Therefore, a stereoscopic image SR method based on view incorporation and convolutional neural networks (CNN) is proposed. For a given MR stereoscopic image, the left view of which is observed in full resolution, while the right view is viewed in low resolution, the SR method is implemented in two stages. In the first stage, a view difference image is defined to represent the correlation between views. It is estimated by using the full-resolution left view and the interpolated right view as input to the modified CNN. Accordingly, a high-precision view difference image is obtained. In the second stage, to incorporate the estimated right view in the first stage, a global reconstruction constraint is presented to make the estimated right view consistent with the low-resolution right view in terms of the MR stereoscopic image observation model. Experimental results demonstrated that, compared with the SR convolutional neural network (SRCNN) method and depth map based SR method, the proposed method improved the reconstructed right view quality by 0.54 dB and 1.14 dB, respectively, in the Peak Signal to Noise Ratio (PSNR), and subjective evaluation also implied that the proposed method produced better reconstructed stereoscopic images.

Highlights

  • With advancements in imaging, processing, and display technologies in recent years, stereoscopic video entertainment and communication have emerged as promising services of novel visual user experiences such as three-dimensional (3D) television [1], free-viewpoint video [2], and video conferencing [3]

  • One view of the mixed resolution (MR) stereoscopic image is provided with full resolution (FR), whereas the other view is degraded by the MR stereoscopic image observation model

  • We propose a stereoscopic image SR method based on view incorporation and convolutional neural network (CNN)

Read more

Summary

Introduction

With advancements in imaging, processing, and display technologies in recent years, stereoscopic video entertainment and communication have emerged as promising services of novel visual user experiences such as three-dimensional (3D) television [1], free-viewpoint video [2], and video conferencing [3]. Stereoscopic images provide depth perception and engender an immersive user experience [4]. On the basis of binocular suppression theory [5], higher quality views will be received as the perceived quality of stereo vision by the human visual system (HVS). Mixed resolution (MR) stereoscopic image processing techniques are motivated by binocular perception theory. To decrease the amount of data while preserving the high definition and stereo vision experience, the low-resolution

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call