Litcius/Paper detail

An Adaptive All-Pass Filter for Time-Varying Delay Estimation

Beth Jelfs, Shuai Sun, Kamran Ghorbani, Christopher Gilliam

2021IEEE Signal Processing Letters26 citationsDOIOpen Access PDF

Abstract

The focus of this letter is the estimation of a delay between two signals. Such a problem is common in signal processing and particularly challenging when the delay is non-stationary in nature. Our proposed solution is based on an all-pass filter framework comprising of two elements: a time delay is equivalent to all-pass filtering and an all-pass filter can be represented in terms of a ratio of a finite impulse response (FIR) filter and its time reversal. Using these elements, we propose an adaptive filtering algorithm with an LMS style update that estimates the FIR filter coefficients and the time delay. Specifically, at each time step, the algorithm updates the filter coefficients based on a gradient descent update and then extracts an estimate of the time delay from the filter. We validate our algorithm on synthetic data demonstrating that it is both accurate and capable of tracking time-varying delays.

Topics & Concepts

Adaptive filterKernel adaptive filterComputer scienceAlgorithmFilter designFinite impulse responseFilter (signal processing)Control theory (sociology)Root-raised-cosine filterGradient descentSignal processingRecursive filterImpulse responseMathematicsFocus (optics)Tracking (education)Multidelay block frequency domain adaptive filterLeast mean squares filterDigital filterAdaptive algorithmFiltering problemRaised-cosine filterImpulse (physics)SIGNAL (programming language)Low-pass filterLinear filterGroup delay and phase delayAdvanced Adaptive Filtering TechniquesDigital Filter Design and ImplementationSparse and Compressive Sensing Techniques