ADAPTIVE FILTER ALGORITHMS PACKAGE FOR MATLAB ver. 1.0 This package was created during completing „Combined Noise and Echo Reduction” M. Sc. Thesis (Silesian University of Technology, Gliwice, Poland) for simulation purposes (full thesis is available (in Polish) in cner.pdf file). The package covers main topics in adaptive algorithms. List of included procedures is as follows: Stochastic gradient algorithms APAOCF Affine Projection Algorithm with Orthogonal Correction Factors DCTLMS Discrete Cosine Transform Least Mean Square DFTLMS Discrete Fourier Transform Least Mean Square DHTLMS Discrete Hartley Transform Least Mean Square eAPA e-Affine Projection Algorithms eNLMS e-Normalized Least Mean Square epNLMS e-Power Normalized Least Mean Square ePRA e-Partial Rank Algorithm LeakyLMS Leaky Least Mean Square LMF Least Mean Fourth LMMN Least Mean Mixed Norm LMS Least Mean Square seLMS Signed Error Least Mean Square srLMS Signed Regressor Least Mean Square ssLMS Sign-Sign Least Mean Square Block algorithms Bconv Efficient block convolution via DFT BDCTconv Efficient block convolution via DCT BDHTconv Efficient block convolution via DHT cDCTBpNLMS Constrained DCT Block Power Normalized Least Mean Square cDFTBpNLMS Constrained DFT Block Power Normalized Least Mean Square cDHTBpNLMS Constrained DHT Block Power Normalized Least Mean Square dlBconv Delayless efficient block convolution via DFT fcDCTBpNLMS Constrained DCT Block Power Normalized Least Mean Square with error estimate by convolution in fullband fcDFTBpNLMS Constrained DFT Block Power Normalized Least Mean Square with error estimate by convolution in fullband fcDHTBpNLMS Constrained DHT Block Power Normalized Least Mean Square with error estimate by convolution in fullband efcDFTBpNLMS Constrained DFT Block Power Normalized Least Mean Square with error estimate by efficient block convolution in fullband dlefcDFTBpNLMS Delayless constrained DFT Block Power Normalized Least Mean Square with error estimate by efficient block convolution in fullband uDCTBpNLMS Unconstrained DCT Block Power Normalized Least Mean Square uDFTBpNLMS Unconstrained DFT Block Power Normalized Least Mean Square uDHTBpNLMS Unconstrained DHT Block Power Normalized Least Mean Square Infinite memory Recursive Least Squares FAEST Fast a Posteriori Error Sequential Technique FARLS Fast Array Recursive Least Squares FARLSL Fast Array Recursive Least Squares Lattice based on QR Decomposition FKF Fast Kalman Filter FTF Fast Transversal Filters QRRLS QR Recursive Least Squares IQRRLS Inverse QR Recursive Least Squares NRLSL Normalized Recursive Least Squares Lattice RLS Recursive Least Squares SFTF Stabilized Fast Transversal Filters RLSLpos A Posteriori Based Recursive Least Squares Lattice RLSLposf A Posteriori Based Error Feedback Recursive Least Squares Lattice RLSLpri A Priori Based Recursive Least Squares Lattice RLSLprif A Priori Based Error Feedback Recursive Least Squares Lattice Finite memory Recursive Least Squares SWRLS Sliding Window Recursive Least Squares SWIQRRLS Sliding Window Inverse QR Recursive Least Squares SWQRRLS Sliding Window QR Recursive Least Squares SWFARLS Sliding Window Fast Array Recursive Least Squares SWFARLSL Sliding Window Fast Array Recursive Least Squares Lattice Based on QR Decomposition SWRLSLpos Sliding Window a Posteriori Based Recursive Least Squares Lattice RLSLposf Sliding Window a Posteriori Based Error Feedback Recursive Least Squares Lattice SWRLSLpri Sliding Window A Priori Based Recursive Least Squares Lattice SWRLSLprif Sliding Window a Priori Based Error Feedback Recursive Least Squares Lattice Miscellaneous algorithms BEFAP_FARLS Block Exact Fast Affine Projection Algorithm with Fast Array Recursive Least Squares prediction BEFAP_FQRD Block Exact Fast Affine Projection Algorithm with Fast Array Recursive Least Squares Lattice prediction For absolutely outstanding reference in adaptive filtering look „Fundamentals of Adaptive Filtering” by Ali H. Sayed. Also check „Adaptive Filters. Theory and Applications” by B. Farhang-Boroujeny. LICENSE: Adaptive Filter Algorithms Package for Matlab ver. 1.0 Copyright (C) <2006> Bartosz Zator Have you found a bug? Please let me know: <braton@gmail.com> This program is free software; you can redistribute it and/or modify it under the terms of the GNU General Public License as published by the Free Software Foundation; either version 2 of the License, or (at your option) any later version. This program is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public License for more details. You should have received a copy of the GNU General Public License along with this program; if not, write to the Free Software Foundation, Inc., 51 Franklin Street, Fifth Floor, Boston, MA 02110-1301 USA. Bartosz Zator M. Sc. E-mail: braton@gmail.com Bytom, $04-Nov-2006, 16:07$ Poland