Estimation of Consistent Time Delays in Subsample via Auxiliary-Function-Based Iterative Updates
Kouei Yamaoka, Yukoh Wakabayashi, Nobutaka Ono

TL;DR
This paper introduces a novel joint optimization algorithm for estimating multiple time delays in sensor arrays, leveraging auxiliary functions and a consistent constraint to improve accuracy over traditional pairwise methods.
Contribution
It proposes a new joint estimation method using auxiliary functions and a consistency constraint, enhancing accuracy in multiple time delay estimation.
Findings
Outperforms pairwise methods in accuracy.
Effectively estimates multiple time delays simultaneously.
Provides a robust optimization framework for TD estimation.
Abstract
In this paper, we propose a new algorithm for the estimation of multiple time delays (TDs). Since a TD is a fundamental spatial cue for sensor array signal processing techniques, many methods for estimating it have been studied. Most of them, including generalized cross correlation (CC)-based methods, focus on how to estimate a TD between two sensors. These methods can then be easily adapted for multiple TDs by applying them to every pair of a reference sensor and another one. However, these pairwise methods can use only the partial information obtained by the selected sensors, resulting in inconsistent TD estimates and limited estimation accuracy. In contrast, we propose joint optimization of entire TD parameters, where spatial information obtained from all sensors is taken into account. We also introduce a consistent constraint regarding TD parameters to the observation model. We then…
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Taxonomy
TopicsDirection-of-Arrival Estimation Techniques · Radar Systems and Signal Processing · Distributed Sensor Networks and Detection Algorithms
