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Zero-Delay Rate-Distortion Optimization for Partially Observable Gauss-Markov Processes

机译:用于部分可观察到的高斯 - 马尔可夫过程的零延迟速率失真优化

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In this paper, we consider rate-distortion tradeoff problems for time-varying, multi-dimensional, partially observable Gauss-Markov processes subject to the zero-delay constraint. As a distortion metric, we consider the mean square error between the hidden state process and the reconstructed process. It is shown that an optimal test channel can be realized by a cascade connection of a pre-Kalman filter estimating the hidden state of the Gauss-Markov process, an additive white Gaussian noise channel, and a post-Kalman filter estimating the internal state of the pre-Kalman filter. An optimal test channel can be constructed by semidefinite programming (SDP). We also show that for stationary sources, there exists a time-invariant optimal test channel, which can also be found by SDP.
机译:在本文中,我们考虑经受零延迟约束的时变多维,部分观察到的高斯 - 马尔可夫过程的速率 - 失真权衡问题。作为失真度量,我们考虑隐藏状态过程和重建过程之间的均方误差。结果表明,最佳测试通道可以通过梯形滤波器的级联连接来实现估计高斯 - 马尔可夫过程的隐藏状态,添加剂白色高斯噪声通道和估计内部状态的后卡尔曼滤波器Pre-Kalman过滤器。最佳测试通道可以由SEMIDEFINITE编程(SDP)构成。我们还表明,对于静止来源,存在一个时间不变的最佳测试通道,也可以通过SDP找到。

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