Sparse representation based intraframe and semi‐intraframe video coding schemes for low bitrates

Abstract This paper proposes some extensions of the successful sparse coding of still images to intraframe and semi‐intraframe video coding. The presented frameworks apply the efficient K‐singular value decomposition and recursive least squares dictionary learning methods for sparse representation o...

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Main Authors: Maziar Irannejad, Homayoun Mahdavi‐Nasab
Format: Article
Language:English
Published: Wiley 2021-04-01
Series:IET Image Processing
Online Access:https://doi.org/10.1049/ipr2.12091
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spelling doaj-412e9387bc404eb58ca1f9e2409036aa2021-07-14T13:20:46ZengWileyIET Image Processing1751-96591751-96672021-04-011551128114310.1049/ipr2.12091Sparse representation based intraframe and semi‐intraframe video coding schemes for low bitratesMaziar Irannejad0Homayoun Mahdavi‐Nasab1Digital Processing and Machine Vision Research Center, Najafabad Branch Islamic Azad University Najafabad IranDigital Processing and Machine Vision Research Center, Najafabad Branch Islamic Azad University Najafabad IranAbstract This paper proposes some extensions of the successful sparse coding of still images to intraframe and semi‐intraframe video coding. The presented frameworks apply the efficient K‐singular value decomposition and recursive least squares dictionary learning methods for sparse representation of videos to study their coding performances. In the proposed semi‐intraframe schemes, namely, SISC1 and SISC2, only frame‐blocks with more than a threshold deviation from the blocks of the previous frame are transmitted/coded. This reduces the required bitrate and prevents the sparse coding of similar blocks, leading to more efficient video coding methods. The results show that the dictionary learning‐based intraframe coding improves the rate‐distortion performance of the conventional Motion‐JPEG and Motion‐JPEG2000 at low bitrates for more than about 3 and 0.5 dB of PSNR on average (for 0.2–1 bpp compression), respectively. The proposed methods outperform the basic dictionary learning‐based coding, especially for slower changing videos, generally, with more than 3 dB superiority on average over the tested bitrates. These schemes even present superior performance than the HEVC in the intramode for the complex textured or cluttered scenes. The proposed SISC2 method also saves up to about 50% of the sparse coding computational cost by preventing the coding of more similar frame‐blocks.https://doi.org/10.1049/ipr2.12091
collection DOAJ
language English
format Article
sources DOAJ
author Maziar Irannejad
Homayoun Mahdavi‐Nasab
spellingShingle Maziar Irannejad
Homayoun Mahdavi‐Nasab
Sparse representation based intraframe and semi‐intraframe video coding schemes for low bitrates
IET Image Processing
author_facet Maziar Irannejad
Homayoun Mahdavi‐Nasab
author_sort Maziar Irannejad
title Sparse representation based intraframe and semi‐intraframe video coding schemes for low bitrates
title_short Sparse representation based intraframe and semi‐intraframe video coding schemes for low bitrates
title_full Sparse representation based intraframe and semi‐intraframe video coding schemes for low bitrates
title_fullStr Sparse representation based intraframe and semi‐intraframe video coding schemes for low bitrates
title_full_unstemmed Sparse representation based intraframe and semi‐intraframe video coding schemes for low bitrates
title_sort sparse representation based intraframe and semi‐intraframe video coding schemes for low bitrates
publisher Wiley
series IET Image Processing
issn 1751-9659
1751-9667
publishDate 2021-04-01
description Abstract This paper proposes some extensions of the successful sparse coding of still images to intraframe and semi‐intraframe video coding. The presented frameworks apply the efficient K‐singular value decomposition and recursive least squares dictionary learning methods for sparse representation of videos to study their coding performances. In the proposed semi‐intraframe schemes, namely, SISC1 and SISC2, only frame‐blocks with more than a threshold deviation from the blocks of the previous frame are transmitted/coded. This reduces the required bitrate and prevents the sparse coding of similar blocks, leading to more efficient video coding methods. The results show that the dictionary learning‐based intraframe coding improves the rate‐distortion performance of the conventional Motion‐JPEG and Motion‐JPEG2000 at low bitrates for more than about 3 and 0.5 dB of PSNR on average (for 0.2–1 bpp compression), respectively. The proposed methods outperform the basic dictionary learning‐based coding, especially for slower changing videos, generally, with more than 3 dB superiority on average over the tested bitrates. These schemes even present superior performance than the HEVC in the intramode for the complex textured or cluttered scenes. The proposed SISC2 method also saves up to about 50% of the sparse coding computational cost by preventing the coding of more similar frame‐blocks.
url https://doi.org/10.1049/ipr2.12091
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