Loading [MathJax]/extensions/MathMenu.js
A Novel No-Reference PSNR Estimation Method With Regard to Deblocking Filtering Effect in H.264/AVC Bitstreams | IEEE Journals & Magazine | IEEE Xplore

A Novel No-Reference PSNR Estimation Method With Regard to Deblocking Filtering Effect in H.264/AVC Bitstreams


Abstract:

Peak signal-to-noise ratio (PSNR) monitoring is an important application for video quality assessment of video systems at the receiver sides where no-reference PSNR estim...Show More

Abstract:

Peak signal-to-noise ratio (PSNR) monitoring is an important application for video quality assessment of video systems at the receiver sides where no-reference PSNR estimation is essential. Most of the PSNR estimation methods for H.264/AVC bitstreams ignore or do not consider the effect of deblocking filtering. Instead, they only focus on estimating the mean squared error (MSE) due to quantization. However, the PSNR estimation affected by deblocking filtering cannot be negligible for sequences of large picture resolutions. In this paper, we first present an MSE estimation method on H.264/AVC bitstreams by considering the deblocking filtering effect so that more accurate PSNR estimation can be made. For this, the total MSE between the original and reconstructed frames is separated into two terms for PSNR estimation: one due to quantization error and the other due to the deblocking filtering effect in H.264/AVC. In the proposed PSNR estimation, the contribution of deblocking filtering to the total MSE is quantified by a compensation factor of each encoded picture type between the original and the deblocked frames. Experimental results show that the proposed method effectively reflects the contribution of deblocking filtering to PSNR estimation, thus yielding more accurate PSNR estimates.
Page(s): 320 - 330
Date of Publication: 25 April 2013

ISSN Information:

Citations are not available for this document.

I. Introduction

With the rapid increase in the demand for high-quality video services, quality of service (QoS) has become an important issue; thus, intensive study of accurate quality assessment methods on video is essential. The Video Quality Expert Group (VQEG) has specified several guidelines to measure video quality [1], [2]. Traditionally, quality assessment methods are classified into three kinds, depending on the availability of original reference data: 1) full-reference (FR) methods measure the quality by referencing the original data [3], [4]; 2) reduced-reference (RR) methods [5] are similar to the full-reference except that the original data are limitedly transmitted or partially used at receiver sides; and 3) no-reference (NR) methods make visual quality assessment (VQA) without the original data, which can be very practical in many applications [6].

Cites in Papers - |

Cites in Papers - IEEE (5)

Select All
1.
Zhenyu Wu, Hong Hu, "Reconstruction-based no-reference video quality assessment", 2016 IEEE Region 10 Conference (TENCON), pp.3075-3078, 2016.
2.
Manasa C, Pramod Sunagr, "Implementation of H.264/AVC video authentication system using watermark", 2016 2nd International Conference on Applied and Theoretical Computing and Communication Technology (iCATccT), pp.538-543, 2016.
3.
Y. Zhang, T. Y. Ji, M. S. Li, Q. H. Wu, "Identification of Power Disturbances Using Generalized Morphological Open-Closing and Close-Opening Undecimated Wavelet", IEEE Transactions on Industrial Electronics, vol.63, no.4, pp.2330-2339, 2016.
4.
Xin Huang, Jacob S⊘gaard, S⊘ren Forchhammer, "No-reference video quality assessment by HEVC codec analysis", 2015 Visual Communications and Image Processing (VCIP), pp.1-4, 2015.
5.
Jacob Søgaard, Søren Forchhammer, Jari Korhonen, "No-Reference Video Quality Assessment Using Codec Analysis", IEEE Transactions on Circuits and Systems for Video Technology, vol.25, no.10, pp.1637-1650, 2015.

Cites in Papers - Other Publishers (6)

1.
Jie Li, Ransheng Feng, Qiyue Li, "Quality of Experience for Wireless Video Streaming", Encyclopedia of Wireless Networks, pp.1143, 2020.
2.
Jie Li, Ransheng Feng, Qiyue Li, "Quality of Experience for Wireless Video Streaming", Encyclopedia of Wireless Networks, pp.1, 2019.
3.
Mario Vranjes, Viliams Bajcinovci, Ratko Grbic, Denis Vajak, "No-reference artifacts measurements based video quality metric", Signal Processing: Image Communication, vol.78, pp.345, 2019.
4.
Mario Vranjes, Snjezana Rimac-Drlje, Denis Vranjes, "Foveation-based content adaptive root mean squared error for video quality assessment", Multimedia Tools and Applications, 2017.
5.
Xin Huang, Jacob S?gaard, S?ren Forchhammer, "No-reference pixel based video quality assessment for HEVC decoded video", Journal of Visual Communication and Image Representation, vol.43, pp.173, 2017.
6.
Tamer Shanableh, "A regression-based framework for estimating the objective quality of HEVC coding units and video frames", Signal Processing: Image Communication, vol.34, pp.22, 2015.
Contact IEEE to Subscribe

References

References is not available for this document.