Task-Based Analog-to-Digital Converters
Peter Neuhaus, Nir Shlezinger, Meik D\"orpinghaus, Yonina C. Eldar,, Gerhard Fettweis

TL;DR
This paper introduces task-based ADCs optimized for recovering specific parameters from multivariate signals, demonstrating superior performance over traditional methods through theoretical analysis and numerical validation.
Contribution
It proposes a joint analog-digital filter design for task-based ADCs, deriving closed-form MSE expressions and providing practical guidelines for rate-constrained systems.
Findings
Joint design outperforms separate analog or digital estimation.
Closed-form MSE expressions enable system optimization.
Numerical results confirm significant performance gains.
Abstract
Obtaining digital representations of multivariate continuous-time (CT) signals is a challenge encountered in many signal processing systems. In practice, these signals are often acquired to extract some underlying information, i.e., for a specific task. Employing conventional task-agnostic analog-to-digital converters (ADCs), typically designed to minimize the mean squared error (MSE) in reconstructing the CT input signal, can be costly and energy-inefficient in such cases. In this work, we study task-based ADCs, which are designed to obtain a digital representation of a multivariate CT input process with the goal of recovering an underlying statistically related parameter vector, referred to as \emph{the task}. The proposed system employs analog filtering, uniform sampling, and scalar uniform quantization of the input process before recovering the task vector using a linear digital…
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