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A robust combination interpolation method for video super-resolution

Cao Thu Bui 1, *
Thuong Tien Le 2
Tuan Hong Do 2
Hoang Duc Nguyen 3
  1. Ho Chi Minh City University of Industry (HUI)
  2. University of Technology, VNU-HCM
  3. Broadcast Research and Application Center, Vietnam Television (VTV-BRAC)
Correspondence to: Cao Thu Bui, Ho Chi Minh City University of Industry (HUI). Email: pvphuc@vnuhcm.edu.vn.
Volume & Issue: Vol. 16 No. 3 (2013) | Page No.: 41-57 | DOI: 10.32508/stdj.v16i3.1609
Published: 2013-09-30

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Copyright The Author(s) 2023. This article is published with open access by Vietnam National University, Ho Chi Minh city, Vietnam. This article is distributed under the terms of the Creative Commons Attribution License (CC-BY 4.0) which permits any use, distribution, and reproduction in any medium, provided the original author(s) and the source are credited. 

Abstract

This paper presents an efficient method for video super-resolution (SR) based on two main ideals: Firstly, input video frames can be separated into two components, nontexturing image and texturing image. Then each component image is applied to a compatible interpolation method to improve the quality of high-resolution (HR) reconstructed frame. Secondly, based on the approach that border regions of image details are the most lossy information regions from the sampling process. Therefore, a task of compensation interpolation is essential to increase the quality of the reconstructed HR images. From these discussions, we proposed an efficient method for video SR by combining the spatial interpolation in different texturing regions and the sampling compensation interpolation to improve the quality of video super-resolution. Our results shown that, the quality of HR frames, reconstructed by the proposed method, is better than that of other methods, , and in recently. The significant contribution is the low complexity of the proposed method. Hence, it is possible to apply the proposed algorithm to real-time video super-resolution applications.

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