Acoustic impulse response functions are generally sparse in nature and traditionally these are modeled by adaptive finite impulse response (FIR) filters trained using a least mean square (LMS) algorithm. The conventional LMS algorithm is not effective in modeling sparse systems and sparse LMS algorithms have been recently developed to improve the modeling in such scenarios. However, the traditional sparse LMS algorithms are not robust to disturbances at the error sensor and may diverge in some scenarios. With an objective to overcome this limitation of conventional sparse adaptive algorithm, this paper presents a robust sparse adaptive algorithm. The new algorithm has been shown to effectively model sparse systems in a robust manner. In add...
Abstract—A new framework for designing robust adaptive filters is introduced. It is based on the opt...
Abstract — In the context of Acoustic Echo Cancellation (AEC), sparseness level of acoustic impulse ...
In this paper, we propose an algorithm to improve the perfor-mance of the mu-law PNLMS algorithm (MP...
Sparse systems are those systems, the impulse response of which contains a signi_cant number of zero...
Abstract—We introduce a new family of algorithms to exploit sparsity in adaptive filters. It is base...
This paper aims at studying and comparing the performance of typical sparse algorithms for acoustic ...
Sparseness variation in acoustic impulse response arises due to changes in temperature, pressure, ac...
Adaptive filters with a large number of coefficients are usually involved in both network and acoust...
A frequency-domain adaptive algorithm for acoustic echo cancellation is proposed. This new algorithm...
The need to accurately and efficiently estimate room impulse responses arises in many acoustic signa...
A sparse system identification algorithm for network echo cancellation is presented. This new approa...
This book treats the topic of extending the adaptive filtering theory in the context of massive mult...
© 2017 IEEE. The proportionate normalized least-mean-squares (PNLMS) algorithm is commonly used in a...
Sparse impulse responses are encountered in many applica-tions (network and acoustic echo cancellati...
University of Minnesota Ph.D. dissertation. December 2011. Major: Electrical Engineering. Advisor:Pr...
Abstract—A new framework for designing robust adaptive filters is introduced. It is based on the opt...
Abstract — In the context of Acoustic Echo Cancellation (AEC), sparseness level of acoustic impulse ...
In this paper, we propose an algorithm to improve the perfor-mance of the mu-law PNLMS algorithm (MP...
Sparse systems are those systems, the impulse response of which contains a signi_cant number of zero...
Abstract—We introduce a new family of algorithms to exploit sparsity in adaptive filters. It is base...
This paper aims at studying and comparing the performance of typical sparse algorithms for acoustic ...
Sparseness variation in acoustic impulse response arises due to changes in temperature, pressure, ac...
Adaptive filters with a large number of coefficients are usually involved in both network and acoust...
A frequency-domain adaptive algorithm for acoustic echo cancellation is proposed. This new algorithm...
The need to accurately and efficiently estimate room impulse responses arises in many acoustic signa...
A sparse system identification algorithm for network echo cancellation is presented. This new approa...
This book treats the topic of extending the adaptive filtering theory in the context of massive mult...
© 2017 IEEE. The proportionate normalized least-mean-squares (PNLMS) algorithm is commonly used in a...
Sparse impulse responses are encountered in many applica-tions (network and acoustic echo cancellati...
University of Minnesota Ph.D. dissertation. December 2011. Major: Electrical Engineering. Advisor:Pr...
Abstract—A new framework for designing robust adaptive filters is introduced. It is based on the opt...
Abstract — In the context of Acoustic Echo Cancellation (AEC), sparseness level of acoustic impulse ...
In this paper, we propose an algorithm to improve the perfor-mance of the mu-law PNLMS algorithm (MP...