We investigate information-theoretic limits and design of communication under receiver quantization. Unlike most existing studies, this work is more focused on the impact of resolution reduction from high to low. We consider a standard transceiver architecture, which includes i.i.d. complex Gaussian codebook at the transmitter, and a symmetric quantizer cascaded with a nearest neighbor decoder at the receiver. Employing the generalized mutual information (GMI), an achievable rate under general quantization rules is obtained in an analytical form, which shows that the rate loss due to quantization is $\log\left(1+γ\mathsf{SNR}\right)$, where $γ$ is determined by thresholds and levels of the quantizer. Based on this result, the performance under uniform receiver quantization is analyzed comprehensively. We show that the front-end gain control, which determines the loading factor of quantization, has an increasing impact on performance as the resolution decreases. In particular, we prove that the unique loading factor that minimizes the MSE also maximizes the GMI, and the corresponding irreducible rate loss is given by $\log\left(1+\mathsf {mmse}\cdot\mathsf{SNR}\right)$, where mmse is the minimum MSE normalized by the variance of quantizer input, and is equal to the minimum of $γ$. A geometrical interpretation for the optimal uniform quantization at the receiver is further established. Moreover, by asymptotic analysis, we characterize the impact of biased gain control, showing how small rate losses decay to zero and providing rate approximations under large bias. From asymptotic expressions of the optimal loading factor and mmse, approximations and several per-bit rules for performance are also provided. Finally we discuss more types of receiver quantization and show that the consistency between achievable rate maximization and MSE minimization does not hold in general.
翻译:本研究探讨接收端量化条件下的信息论极限与通信系统设计。与现有研究不同,本文更侧重于从高分辨率到低分辨率转换所产生的影响。我们考虑标准收发机架构:发射端采用独立同分布复高斯码本,接收端采用对称量化器级联最近邻解码器。通过广义互信息(GMI)分析,推导出通用量化规则下可达速率的解析表达式,结果表明量化导致的速率损失为 $\log\left(1+γ\mathsf{SNR}\right)$,其中 $γ$ 由量化器的阈值与电平决定。基于此结论,系统分析了均匀接收端量化的性能。研究发现:决定量化负载因子的前端增益控制,其性能影响随分辨率降低而增强。特别地,我们证明最小化均方误差(MSE)的唯一负载因子同样能最大化GMI,对应的不可约速率损失为 $\log\left(1+\mathsf {mmse}\cdot\mathsf{SNR}\right)$,其中mmse表示量化器输入方差归一化的最小MSE,其值等于 $γ$ 的最小值。进一步建立了接收端最优均匀量化的几何解释。通过渐近分析,我们刻画了偏置增益控制的影响:揭示了小速率损失趋零的规律,并给出大偏置条件下的速率近似表达式。基于最优负载因子与mmse的渐近公式,推导了性能近似表达式及若干按比特性能准则。最后讨论了更多类型的接收端量化方案,指出可达速率最大化与MSE最小化的一致性在一般情况下并不成立。