63 research outputs found
Convex combination of adaptive filters for a variable tap-length LMS algorithm
A convex combination of adaptive filters is utilized
to improve the performance of a variable tap-length
least-mean-square (LMS) algorithm in a low signal-to-noise
environment (SNR 0 dB). As shown by our simulations,
the adaptation of the tap-length in the variable tap-length LMS
algorithm is highly affected by the parameter choice and the noise
level. Combination approaches can improve such adaptation by
exploiting advantages of parallel adaptive filters with different
parameters. Simulation results support the good properties of the
proposed method
Variable tap-length adaptive algorithm which exploits both second and fourth order statistics.
A new variable tap-length adaptive algorithm
which exploits both second and fourth order statistics is
proposed in this paper. In this algorithm, the tap-length
of the adaptive filter is varying rather than fixed, and
controlled by fourth order statistics, whereas the coefficient
update retains a conventional least mean square
(LMS) form. As will be seen in the simulation results,
the proposed algorithm has a faster convergence rate as
compared with an existing variable tap-length LMS algorithm
which is based only on second order statistics in
sub-Gaussian noise environments
A new gradient based variable step-size LMS algorithm
A new gradient-based variable step-size
LMS algorithm (VSSLMS) is proposed in this paper.
The step size of the proposed algorithm is
proportional to the squared norm of the smoothed
gradient vector, which is a proximity measure of the
adaptive process. In comparison with the existing
methods, the proposed VSSLMS algorithm has
improved convergence properties. Furthermore, the
parameter choice of the proposed algorithm can be
easily determined according to the analysis.
Simulation results show the good properties of the
proposed algorithm and support the performance
analysis
Variable length adaptive filtering within incremental learning algorithms for distributed networks
In this paper we propose the use of variable length adaptive filtering within the context of incremental learning for distributed networks. Algorithms for such incremental learning strategies must have low computational complexity and require minimal communication between nodes as compared to centralized networks. To match the dynamics of the data across the network we optimize the length of the adaptive filters used within each node by exploiting the statistics of the local signals to each node. In particular, we use a fractional tap-length solution to determine the length of the adaptive filter within each node, the coefficients of which are adapted with an incremental-learning learning algorithm. Simulation studies are presented to confirm the convergence properties of the scheme and these are verified by theoretical analysis of excess mean square error and mean square deviation
Multimodal blind source separation for moving sources
A novel multimodal approach is proposed to solve the problem of
blind source separation (BSS) of moving sources. The challenge
of BSS for moving sources is that the mixing filters are time varying,
thus the unmixing filters should also be time varying, which are
difficult to track in real time. In the proposed approach, the visual
modality is utilized to facilitate the separation for both stationary and
moving sources. The movement of the sources is detected by a 3-D
tracker based on particle filtering. The full BSS solution is formed
by integrating a frequency domain blind source separation algorithm
and beamforming: if the sources are identified as stationary, a frequency
domain BSS algorithm is implemented with an initialization
derived from the visual information. Once the sources are moving,
a beamforming algorithm is used to perform real time speech
enhancement and provide separation of the sources. Experimental
results show that by utilizing the visual modality, the proposed algorithm
can not only improve the performance of the BSS algorithm
and mitigate the permutation problem for stationary sources, but also
provide a good BSS performance for moving sources in a low reverberant
environment
Multimodal blind source separation for moving sources
A novel multimodal approach is proposed to solve the problem of
blind source separation (BSS) of moving sources. The challenge
of BSS for moving sources is that the mixing filters are time varying,
thus the unmixing filters should also be time varying, which are
difficult to track in real time. In the proposed approach, the visual
modality is utilized to facilitate the separation for both stationary and
moving sources. The movement of the sources is detected by a 3-D
tracker based on particle filtering. The full BSS solution is formed
by integrating a frequency domain blind source separation algorithm
and beamforming: if the sources are identified as stationary, a frequency
domain BSS algorithm is implemented with an initialization
derived from the visual information. Once the sources are moving,
a beamforming algorithm is used to perform real time speech
enhancement and provide separation of the sources. Experimental
results show that by utilizing the visual modality, the proposed algorithm
can not only improve the performance of the BSS algorithm
and mitigate the permutation problem for stationary sources, but also
provide a good BSS performance for moving sources in a low reverberant
environment
Steady-state performance analysis of a variable tap-length LMS algorithm
A steady-state performance analysis of the fractional
tap-length (FT) variable tap-length least mean square (LMS) algorithm is
presented in this correspondence. Based on the analysis, a mathematical
formulation for the steady-state tap length is obtained. Some general
criteria for parameter selection are also given. The analysis and the associated
discussions give insight into the performance of the FT algorithm,
which may potentially extend its practical applicability. Simulation results
support the theoretical analysis and discussions
Steady-state performance of incremental learning over distributed networks for non-Gaussian data.
In this paper, the steady-state performance of the
distributed least mean-squares (dLMS) algorithm within an
incremental network is evaluated without the restriction of
Gaussian distributed inputs. Computer simulations are presented
to verify the derived performance expressions
A new variable tap-length LMS algorithm to model an exponential decay impulse response
This letter proposes a new variable tap-length least-mean-square (LMS) algorithm for applications in which the unknown filter impulse response sequence has an exponential decay
envelope. The algorithm is designed to minimize the mean-square
deviation (MSD) between the optimal and adaptive filter weight
vectors at each iteration. Simulation results show the proposed algorithm
has a faster convergence rate as compared with the fixed
tap-length LMS algorithm and is robust to the initial tap-length
choice
Evaluation of emerging frequency domain convolutive blind source separation algorithms based on real room recordings
This paper presents a comparative study of three of the emerging frequency domain convolutive blind source separation (FDCBSS) techniques i.e. convolutive blind separation of non-stationary sources due to Parra and Spence, penalty function-based joint diagonalization approach for convolutive blind separation of nonstationary sources due to Wang et al. and a geometrically constrained multimodal approach for convolutive blind source separation due to Sanei et al. Objective evaluation is performed on the basis of signal to interference ratio (SIR), performance index (PI) and solution to the permutation problem. The results confirm that a multimodal approach is necessary to properly mitigate the permutation in BSS and ultimately to solve the cocktail party problem. In other words, it is to make BSS semiblind by exploiting prior geometrical information, and thereby providing the framework to find robust solutions for more challenging source separation with moving speakers
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