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

机译:在分布式视频编码的虚拟噪声建模中利用量化和空间相关性

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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.
机译:针对低复杂度编码,基于Wyner-Ziv理论的视频编码器仍未能成功地匹配预测视频编码器的性能。与分布式编码器的编码性能有关的最重要因素之一是对原始视频信号及其在解码器中生成的时间预测之间的相关性进行建模和估计。最新的相关估计器的问题之一是它们在广泛的视频内容和不同的编码设置中的性能不一致。为了解决这个问题,我们开发了一种相关模型,该模型可以通过利用视频信号的空间相关性和量化失真来适应内容和编码参数的变化。在本文中,我们描述了我们的模型,并提供了一些实验,这些实验表明,与最新模型相比,我们的模型可提供高达12%的平均比特率增益和高达0.5 dB的平均PSNR增益。实验表明,通过考虑视频内容和编码参数,可以大大提高分布式编码器的性能。

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