In order to improve the performance of least mean square (LMS)-based adaptive filtering for identifying block-sparse systems, a new adaptive algorithm called block-sparse LMS (BS-LMS) is proposed in this paper. The basis of the proposed algorithm is to insert a penalty of block-sparsity, which is a mixed l2,0 norm of adaptive tap-weights with equal group partition sizes, into the cost function of traditional LMS algorithm. To describe a block-sparse system response, we first propose a Markov-Gaussian model, which can generate a kind of system responses of arbitrary average sparsity and arbitrary average block length using given parameters. Then we present theoretical expressions of the steady-state misadjustment and transient convergence be...
In this paper, a novel way of deriving proportionate adaptive filters is proposed based on diversity...
Abstract Least mean square (LMS) based adaptive algorithms have been attracted much attention since ...
Recently, sparse adaptive learning algorithms have been developed to exploit system sparsity as well...
This work presents a new mixed (2,p-like)-norm penalized least mean squares (LMS) algorithm for bloc...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
In this paper, we develop the adaptive algorithm for system identification where the model is sparse...
A novel block wise convex combination algorithm with adjusting blocks is proposed for block-sparse s...
International audienceArmed with structures, group sparsity can be exploited to extraordinarily impr...
Standard least mean square/fourth (LMS/F) is a classical adaptive algorithm that combined the advant...
In this paper, an improved set-membership proportionate normalized least mean square (SM-PNLMS) algo...
Abstract—We consider adaptive system identification problems with convex constraints and propose a f...
Sparse system identification has attracted much attention in the field of adaptive algorithms, and t...
This paper presents a novel adaptive algorithm based on RZA-LMS for sparse signal and system identif...
International audienceGroup zero-attracting LMS (GZA-LMS) and its reweighted variant (GRZA-LMS) have...
International audienceZero-attracting least-mean-square (ZA-LMS) algorithm has been widely used for ...
In this paper, a novel way of deriving proportionate adaptive filters is proposed based on diversity...
Abstract Least mean square (LMS) based adaptive algorithms have been attracted much attention since ...
Recently, sparse adaptive learning algorithms have been developed to exploit system sparsity as well...
This work presents a new mixed (2,p-like)-norm penalized least mean squares (LMS) algorithm for bloc...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
In this paper, we develop the adaptive algorithm for system identification where the model is sparse...
A novel block wise convex combination algorithm with adjusting blocks is proposed for block-sparse s...
International audienceArmed with structures, group sparsity can be exploited to extraordinarily impr...
Standard least mean square/fourth (LMS/F) is a classical adaptive algorithm that combined the advant...
In this paper, an improved set-membership proportionate normalized least mean square (SM-PNLMS) algo...
Abstract—We consider adaptive system identification problems with convex constraints and propose a f...
Sparse system identification has attracted much attention in the field of adaptive algorithms, and t...
This paper presents a novel adaptive algorithm based on RZA-LMS for sparse signal and system identif...
International audienceGroup zero-attracting LMS (GZA-LMS) and its reweighted variant (GRZA-LMS) have...
International audienceZero-attracting least-mean-square (ZA-LMS) algorithm has been widely used for ...
In this paper, a novel way of deriving proportionate adaptive filters is proposed based on diversity...
Abstract Least mean square (LMS) based adaptive algorithms have been attracted much attention since ...
Recently, sparse adaptive learning algorithms have been developed to exploit system sparsity as well...