Rate-Distortion-Perception Tradeoff for Gaussian Vector Sources

Jingjing Qian;Sadaf Salehkalaibar;Jun Chen;Ashish Khisti;Wei Yu;Wuxian Shi;Yiqun Ge;Wen Tong
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Abstract

This paper studies the rate-distortion-perception (RDP) tradeoff for a Gaussian vector source coding problem where the goal is to compress the multi-component source subject to distortion and perception constraints. Specifically, the RDP setting with either the Kullback-Leibler (KL) divergence or Wasserstein-2 metric as the perception loss function is examined, and it is shown that for Gaussian vector sources, jointly Gaussian reconstructions are optimal. We further demonstrate that the optimal tradeoff can be expressed as an optimization problem, which can be explicitly solved. An interesting property of the optimal solution is as follows. Without the perception constraint, the traditional reverse water-filling solution for characterizing the rate-distortion (RD) tradeoff of a Gaussian vector source states that the optimal rate allocated to each component depends on a constant, called the water level. If the variance of a specific component is below the water level, it is assigned a zero compression rate. However, with active distortion and perception constraints, we show that the optimal rates allocated to the different components are always positive. Moreover, the water levels that determine the optimal rate allocation for different components are unequal. We further treat the special case of perceptually perfect reconstruction and study its RDP function in the high-distortion and low-distortion regimes to obtain insight to the structure of the optimal solution.
高斯矢量源的速率-失真-感知权衡
本文研究了高斯矢量源编码问题的速率-失真-感知(RDP)权衡问题,该问题的目标是压缩受失真和感知约束的多分量源。具体来说,研究了以Kullback-Leibler (KL)散度或Wasserstein-2度量作为感知损失函数的RDP设置,结果表明,对于高斯矢量源,联合高斯重构是最优的。我们进一步证明了最优权衡可以表示为一个优化问题,该问题可以显式求解。最优解的一个有趣性质如下。在没有感知约束的情况下,用于表征高斯矢量源的速率失真(RD)权衡的传统反向注水解决方案表明,分配给每个分量的最佳速率取决于一个常数,称为水位。如果某一特定分量的方差低于水位,则该分量的压缩率为零。然而,在主动失真和感知约束下,我们发现分配给不同分量的最优速率总是正的。此外,决定不同组件的最佳速率分配的水位是不相等的。我们进一步研究了感知完美重构的特殊情况,并研究了其在高失真和低失真情况下的RDP函数,以深入了解最优解的结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
8.20
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