Cross-Resolution Flow Propagation for Foveated Video Super-Resolution
Eugene Lee, Lien-Feng Hsu, Evan Chen, Chen-Yi Lee

TL;DR
This paper introduces Cross-Resolution Flow Propagation, a novel neural network method for foveated video super-resolution that efficiently combines high-resolution gaze regions with low-resolution context for resource-constrained high-quality video delivery.
Contribution
We propose a new deep learning approach, CRFP, for foveated video super-resolution that leverages eye-tracking data to enhance low-resolution regions based on gaze information.
Findings
CRFP achieves 8x FVSR on REDS dataset.
The method effectively fuses high-resolution gaze regions with low-resolution context.
Evaluation includes leveraging eye tracker noise for past region quality assessment.
Abstract
The demand of high-resolution video contents has grown over the years. However, the delivery of high-resolution video is constrained by either computational resources required for rendering or network bandwidth for remote transmission. To remedy this limitation, we leverage the eye trackers found alongside existing augmented and virtual reality headsets. We propose the application of video super-resolution (VSR) technique to fuse low-resolution context with regional high-resolution context for resource-constrained consumption of high-resolution content without perceivable drop in quality. Eye trackers provide us the gaze direction of a user, aiding us in the extraction of the regional high-resolution context. As only pixels that falls within the gaze region can be resolved by the human eye, a large amount of the delivered content is redundant as we can't perceive the difference in…
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Code & Models
Videos
Cross-Resolution Flow Propagation for Foveated Video Super-Resolution· youtube
Taxonomy
TopicsAdvanced Image Processing Techniques · Advanced Vision and Imaging · Image and Video Quality Assessment
