When the input signal is correlated input signals, and the input and output signal is contaminated by Gaussian noise, the total least squares normalized subband adaptive filter (TLS-NSAF) algorithm shows good performance. However, when it is disturbed by impulse noise, the TLS-NSAF algorithm shows the rapidly deteriorating convergence performance. To solve this problem, this paper proposed the robust total minimum mean M-estimator normalized subband filter (TLMM-NSAF) algorithm. In addition, this paper also conducts a detailed theoretical performance analysis of the TLMM-NSAF algorithm and obtains the stable step size range and theoretical steady-state mean squared deviation (MSD) of the algorithm. To further improve the performance of the ...
To overcome the performance degradation of least mean square (LMS)-type algorithms when input signal...
An efficient and computationally linear algorithm is derived for total least squares solution of ada...
We present the convergence analysis of the recursive least M-estimate (RLM) adaptive filter algorith...
This article studies the mean and mean-square behaviors of the M-estimate based normalized subband a...
This paper proposes a new noise-constrained normalized least mean squares (NC-NLMS) adaptive filteri...
In this paper, a robust M-estimate adaptive filter for impulse noise suppression is proposed. The ob...
Adaptive filters with suitable nonlinear devices are very effective in suppressing the adverse effe...
DoctorThis thesis proposes the mean-square-deviation (MSD) analysis of the normalized subband adapti...
The normalised subband adaptive filter ( NSAF) is a useful adaptive filter, which improves the conve...
In this paper, a FIR adaptive equaliser for impulse noise suppression is proposed. It is based on th...
This paper proposes two gradient-based adaptive algorithms, called the least mean M-estimate and the...
An M-estimate adaptive filter for robust adaptive filtering in impulse noise is proposed. Instead of...
This paper proposes a recursive least M-estimate (RLM) algorithm for robust adaptive filtering in im...
This paper presents a new variable step-size normalized subband adaptive filter (VSS-NSAF) algorithm...
Abstract ᅟ In this paper, the signed regressor normalized subband adaptive filter (SR-NSAF) algorith...
To overcome the performance degradation of least mean square (LMS)-type algorithms when input signal...
An efficient and computationally linear algorithm is derived for total least squares solution of ada...
We present the convergence analysis of the recursive least M-estimate (RLM) adaptive filter algorith...
This article studies the mean and mean-square behaviors of the M-estimate based normalized subband a...
This paper proposes a new noise-constrained normalized least mean squares (NC-NLMS) adaptive filteri...
In this paper, a robust M-estimate adaptive filter for impulse noise suppression is proposed. The ob...
Adaptive filters with suitable nonlinear devices are very effective in suppressing the adverse effe...
DoctorThis thesis proposes the mean-square-deviation (MSD) analysis of the normalized subband adapti...
The normalised subband adaptive filter ( NSAF) is a useful adaptive filter, which improves the conve...
In this paper, a FIR adaptive equaliser for impulse noise suppression is proposed. It is based on th...
This paper proposes two gradient-based adaptive algorithms, called the least mean M-estimate and the...
An M-estimate adaptive filter for robust adaptive filtering in impulse noise is proposed. Instead of...
This paper proposes a recursive least M-estimate (RLM) algorithm for robust adaptive filtering in im...
This paper presents a new variable step-size normalized subband adaptive filter (VSS-NSAF) algorithm...
Abstract ᅟ In this paper, the signed regressor normalized subband adaptive filter (SR-NSAF) algorith...
To overcome the performance degradation of least mean square (LMS)-type algorithms when input signal...
An efficient and computationally linear algorithm is derived for total least squares solution of ada...
We present the convergence analysis of the recursive least M-estimate (RLM) adaptive filter algorith...