Exploiting quantization and spatial correlation in virtual-noise modeling for distributed video coding

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摘要

Aiming for low-complexity encoding, video coders based on Wyner–Ziv theory are still unsuccessfully trying to match the performance of predictive video coders. One of the most important factors concerning the coding performance of distributed coders is modeling and estimating the correlation between the original video signal and its temporal prediction generated at the decoder.One of the problems of the state-of-the-art correlation estimators is that their performance is not consistent across a wide range of video content and different coding settings. To address this problem we have developed a correlation model able to adapt to changes in the content and the coding parameters by exploiting the spatial correlation of the video signal and the quantization distortion.In this paper we describe our model and present experiments showing that our model provides average bit rate gains of up to 12% and average PSNR gains of up to 0.5 dB when compared to the state-of-the-art models. The experiments suggest that the performance of distributed coders can be significantly improved by taking video content and coding parameters into account.

论文关键词:Context adaptive,Distributed video coding,Virtual-noise modeling

论文评审过程:Received 15 January 2010, Accepted 15 May 2010, Available online 25 May 2010.

论文官网地址:https://doi.org/10.1016/j.image.2010.05.005