Gaussian Broadcast Channel with State Estimation

Viswanathan Ramachandran
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Abstract

A state amplification problem, where the common additive state to a Gaussian broadcast channel (BC) is to be estimated at both receivers, is considered. The state process, known non-causally at the encoder, is assumed to be independent and identically distributed (i.i.d.) Gaussian. Both receivers must estimate the state process to within acceptable squared error distortion limits. In addition to the state estimation, our setting also requires message transmission to the stronger receiver at a given rate. We are interested in the optimal trade-offs between the distortions incurred at the receivers when a message at a given rate is to be delivered from the encoder to the strong receiver. A complete characterization of the rate-distortion trade-off region is presented. Our result differs from a recent result where an additional common reconstruction constraint was imposed on the state estimates in the same setting, and it was observed that allowing the weak user to decode part of the private message to the stronger user helps the distortion trade-offs.
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状态估计高斯广播信道
考虑了一个状态放大问题,其中高斯广播信道(BC)的公共加性状态在两个接收端都要估计。在编码器上已知的非因果状态过程假定为独立且同分布(i.i.d)。高斯函数。两个接收器都必须在可接受的平方误差失真范围内估计状态过程。除了状态估计之外,我们的设置还要求以给定的速率将消息传输到较强的接收器。我们感兴趣的是当以给定速率的消息从编码器传送到强接收器时,接收器产生的失真之间的最佳权衡。给出了速率失真权衡区域的完整表征。我们的结果与最近的结果不同,后者在相同的设置下对状态估计施加了额外的公共重构约束,并且观察到允许弱用户解码部分私有消息给较强用户有助于失真权衡。
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