Journal Article10.1109/CJECE.1993.6591635
Joint gradient-based time-delay estimation and adaptive minimum mean-squared-error filtering
D. Boudreau,Peter Kabal +1 more
3
TL;DR: In this paper, a general estimation model is defined in which two observations are available; one is a noisy version of the transmitted signal, while the other one is an adaptive delay element in conjunction with a transversal adaptive filter.
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Abstract: A general estimation model is defined in which two observations are available; one is a noisy version of the transmitted signal, while the other is a noisy filtered and delayed version of the same transmitted signal. The time-varying delay and the filter are unknown quantities that must be estimated. A joint estimator is proposed. It is composed of an adaptive delay element in conjunction with a transversal adaptive filter. The same error signal is used to adjust the delay element and the filter such that the minimum mean squared error is attained. Two joint gradient-based adaptation algorithms are studied. The joint steepest-descent (SD) algorithm is first investigated. The possibility of a multitude of stable solutions is established and a condition of convergence is presented. A stochastic implementation of the joint SD algorithm, under the form of a joint least-mean-square (LMS) algorithm, is then presented. It is analysed in terms of convergence in the mean and in the mean square of both the delay estimate and the adaptive filter weight vector estimate. The conditions of convergence of the joint LMS algorithm are established as a function of the power spectral densities of the observed signals and the minimum mean squared error.
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Citations
Time delayed process model parameter estimation: a classification of techniques
Aidan O'Dwyer
- 01 Jan 2000
TL;DR: The intention of this paper is to provide a framework against which the literature on the estimation of the model parameters of time delayed processes may be viewed and identify themes that are common to many of the proposed techniques.
Maximum Fuzzy Correntropy Kalman Filter and Its Application to Bearings-Only Maneuvering Target Tracking
TL;DR: Simulations show that the proposed MFC-KF algorithm can track a target more accurately than the interactive multi-model extended Kalman filter (IMMEKF), the interactivemulti-model unscented Kalman filters (IMMUKF), or the maximum correntropy Kalmanfilter (MCKF).
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Reduced rank adaptive filtering in impulsive noise environments
Hamza Soury,Karim Abed-Meraim,Mohamed-Slim Alouini +2 more
- 06 Jan 2014
TL;DR: The reduced rank adaptive filter is presented in this impulsive noise environment by using two methods for rank reduction, while the minimized objective function is defined using the Lp norm.
3
References
The generalized correlation method for estimation of time delay
TL;DR: In this paper, a maximum likelihood estimator is developed for determining time delay between signals received at two spatially separated sensors in the presence of uncorrelated noise, where the role of the prefilters is to accentuate the signal passed to the correlator at frequencies for which the signal-to-noise (S/N) ratio is highest and suppress the noise power.
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Image method for efficiently simulating small‐room acoustics
Jont B. Allen,David A. Berkley +1 more
TL;DR: The theoretical and practical use of image techniques for simulating the impulse response between two points in a small rectangular room, when convolved with any desired input signal, simulates room reverberation of the input signal.
Adaptive Signal Processing
S. Thomas Alexander
- 01 Jan 1986
TL;DR: The design and analysis of algorithms is universally compatible with any devices to read and is available in the digital library an online access to it is set as public so you can download it instantly.
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Adaptive noise cancelling: Principles and applications
Bernard Widrow,J.R. Glover,John M. McCool,J. Kaunitz,C.S. Williams,R.H. Hearn,James R. Zeidler,Jr. Eugene Dong,R.C. Goodlin +8 more
- 24 Mar 1975
TL;DR: It is shown that in treating periodic interference the adaptive noise canceller acts as a notch filter with narrow bandwidth, infinite null, and the capability of tracking the exact frequency of the interference; in this case the canceller behaves as a linear, time-invariant system, with the adaptive filter converging on a dynamic rather than a static solution.
Adaptive noise cancelling: Principles and applications
Bernard Widrow,J. Glover,John,Mccool,J. Kaunitz,Charles,Williams,Eugene Dong +7 more
- 24 Mar 1975
TL;DR: It is shown that in treating periodic interference the adaptive noise canceller acts as a notch filter with narrow bandwidth, infinite null, and the capability of tracking the exact frequency of the interference; in this case the canceller behaves as a linear, time-invariant system, with the adaptive filter converging on a dynamic rather than a static solution.
3.9K
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