Resource Allocation and Dithering of Bayesian Parameter Estimation Using Mixed-Resolution Data
Itai E. Berman, Tirza Routtenberg

TL;DR
This paper investigates resource allocation and dithering strategies for Bayesian parameter estimation using mixed-resolution data, deriving analytical MSE expressions, and demonstrating performance improvements through simulations.
Contribution
It introduces a tractable MSE expression for mixed-resolution models, optimizes resource allocation and dithering, and applies these methods to practical estimation scenarios.
Findings
Mixed-resolution data can improve estimation performance.
Dithering enhances accuracy when optimally allocated.
Analytical MSE expressions facilitate system design.
Abstract
Quantization of signals is an integral part of modern signal processing applications, such as sensing, communication, and inference. While signal quantization provides many physical advantages, it usually degrades the subsequent estimation performance that is based on quantized data. In order to maintain physical constraints and simultaneously bring substantial performance gain, in this work we consider systems with mixed-resolution, 1-bit quantized and continuous-valued, data. First, we describe the linear minimum mean-squared error (LMMSE) estimator and its associated mean-squared error (MSE) for the general mixed-resolution model. However, the MSE of the LMMSE requires matrix inversion in which the number of measurements defines the matrix dimensions and thus, is not a tractable tool for optimization and system design. Therefore, we present the linear Gaussian orthonormal (LGO)…
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