This article studies the mean and mean-square behaviors of the M-estimate based normalized subband adaptive filter algorithm (M-NSAF) with robustness against impulsive noise. Based on the contaminated-Gaussian noise model, the stability condition, transient and steady-state results of the algorithm are formulated analytically. These analysis results help us to better understand the M-NSAF performance in impulsive noise. To further obtain fast convergence and low steady-state estimation error, we derive a variable step size (VSS) M-NSAF algorithm. This VSS scheme is also generalized to the proportionate M-NSAF variant for sparse systems. Computer simulations on the system identification in impulsive noise and the acoustic echo cancellation w...
This letter proposes a variable step-size sign subband adaptive filter (SSAF) based on the minimizat...
We present a new subband adaptive filter (R-SAF) which is robust against impulsive noise in system i...
To overcome the performance degradation of least mean square (LMS)-type algorithms when input signal...
When the input signal is correlated input signals, and the input and output signal is contaminated b...
M-Estimate Based Normalized Subband Adaptive Filter Algorithm: Performance Analysis and Improvement
This paper presents a new variable step-size normalized subband adaptive filter (VSS-NSAF) algorithm...
The normalised subband adaptive filter ( NSAF) is a useful adaptive filter, which improves the conve...
DoctorIn this thesis, improving the performance of robust adaptive filtering algorithms in impulsive...
DoctorThis thesis proposes the mean-square-deviation (MSD) analysis of the normalized subband adapti...
This paper proposes a novel individual variable step-size subband adaptive filter algorithm robust t...
DoctorIn this paper, various studies have been conducted to improve the performance of the adaptive ...
This paper presents a subband adaptive filter (SAF) for a system identification where an impulse res...
DoctorThis thesis proposes the various methods to improve the robustness against impulsive measureme...
This paper proposes a new sequential block partial update normalized least mean M-estimate (SB-NLMM)...
This paper proposes an algorithm that actively controls the noise using a variable step-size normali...
This letter proposes a variable step-size sign subband adaptive filter (SSAF) based on the minimizat...
We present a new subband adaptive filter (R-SAF) which is robust against impulsive noise in system i...
To overcome the performance degradation of least mean square (LMS)-type algorithms when input signal...
When the input signal is correlated input signals, and the input and output signal is contaminated b...
M-Estimate Based Normalized Subband Adaptive Filter Algorithm: Performance Analysis and Improvement
This paper presents a new variable step-size normalized subband adaptive filter (VSS-NSAF) algorithm...
The normalised subband adaptive filter ( NSAF) is a useful adaptive filter, which improves the conve...
DoctorIn this thesis, improving the performance of robust adaptive filtering algorithms in impulsive...
DoctorThis thesis proposes the mean-square-deviation (MSD) analysis of the normalized subband adapti...
This paper proposes a novel individual variable step-size subband adaptive filter algorithm robust t...
DoctorIn this paper, various studies have been conducted to improve the performance of the adaptive ...
This paper presents a subband adaptive filter (SAF) for a system identification where an impulse res...
DoctorThis thesis proposes the various methods to improve the robustness against impulsive measureme...
This paper proposes a new sequential block partial update normalized least mean M-estimate (SB-NLMM)...
This paper proposes an algorithm that actively controls the noise using a variable step-size normali...
This letter proposes a variable step-size sign subband adaptive filter (SSAF) based on the minimizat...
We present a new subband adaptive filter (R-SAF) which is robust against impulsive noise in system i...
To overcome the performance degradation of least mean square (LMS)-type algorithms when input signal...