In this paper, a new computationally efficient algorithm for recursive least-squares (RLS) filtering is presented. The proposed Split RLS algorithm can perform the approximated RLS with O(N) complexity for signals having no special data structure to be exploited, while avoiding the high computational complexity (O(N2)) required in the conventional RLS algorithms. Our performance analysis shows that the estimation bias will be small when the input data are less correlated. We also show that for highly correlated data, the orthogonal preprocessing scheme can be used to improve the performance of the Split RLS. Furthermore, the systolic implementation of our algorithm based on the QR- decomposition RLS (QRD-RLS) arrays as well as its applicati...
A new algorithm is developed, which guarantees the normalized bias in the weight vector due to persi...
AbstractIn this paper an inverse QR decomposition based recursive least-squares algorithm for linear...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...
In this paper, a new computationally efficient algorithm for recursive least-squares (RLS) filtering...
The paper presents a new family of RLS adaptive filter-ing algorithms developed for non-stationary s...
Abstract: In this paper, we present a new version of numerically stable fast recursive least squares...
The Recursive Least Squares algorithm (RLS) is utilized in digital signal processing as an adaptive ...
The main feature of the least-squares adaptive algorithms is their high convergence rate. Unfortunat...
Discusses a number of recent developments in the area of fast recursive least squares (RLS) adaptive...
This paper proposes a new fast recursive total least squares (N-RTLS) algorithm to recursively compu...
The split Bregman (SB) method can solve a broad class of L1-regularized optimization problems and ha...
Adaptive filters have found applications in many signal processing problems. In some situations, lin...
A novel architecture for QR-decomposition-based (QRD) recursive least squares (RLS) is presented. It...
The paper presents a family of the sliding window RLS adaptive filtering algorithms with the regular...
This work develops a new fast recursive total least squares (N-RTLS) algorithm to recursively comput...
A new algorithm is developed, which guarantees the normalized bias in the weight vector due to persi...
AbstractIn this paper an inverse QR decomposition based recursive least-squares algorithm for linear...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...
In this paper, a new computationally efficient algorithm for recursive least-squares (RLS) filtering...
The paper presents a new family of RLS adaptive filter-ing algorithms developed for non-stationary s...
Abstract: In this paper, we present a new version of numerically stable fast recursive least squares...
The Recursive Least Squares algorithm (RLS) is utilized in digital signal processing as an adaptive ...
The main feature of the least-squares adaptive algorithms is their high convergence rate. Unfortunat...
Discusses a number of recent developments in the area of fast recursive least squares (RLS) adaptive...
This paper proposes a new fast recursive total least squares (N-RTLS) algorithm to recursively compu...
The split Bregman (SB) method can solve a broad class of L1-regularized optimization problems and ha...
Adaptive filters have found applications in many signal processing problems. In some situations, lin...
A novel architecture for QR-decomposition-based (QRD) recursive least squares (RLS) is presented. It...
The paper presents a family of the sliding window RLS adaptive filtering algorithms with the regular...
This work develops a new fast recursive total least squares (N-RTLS) algorithm to recursively comput...
A new algorithm is developed, which guarantees the normalized bias in the weight vector due to persi...
AbstractIn this paper an inverse QR decomposition based recursive least-squares algorithm for linear...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...