Digital Signal Processing Reference
In-Depth Information
the IEEE Engineering in Medicine and Biology Society, 2001 , Istanbul, Turkey, vol. 2,
pp. 1990-1993, 25-28 October 2001.
70. C.-Y. Chi, C.-H. Chen, and C.-Y. Chen. Blind Equalization and System Identifica-
tion: Batch Processing Algorithms, Performance and Applications . Springer, London,
U.K., 2006.
71. A. Cichocki and S.-I. Amari. Adaptive Blind Signal and Image Processing: Learning
Algorithms and Applications . John Wiley & Sons, Chichester, U.K., 2002.
72. A. Cichocki and R. Unbehauen. Robust neural networks with on-line learn-
ing for blind identification and blind separation of sources. IEEE Transaction on
Circuits and Systems—I: Fundamental Theory and Applications , 43:894-906, 1996.
73. M. Clerc and J. Kennedy. The particle swarm—Explosion, stability, and conver-
gence in a multidimensional complex space. IEEE Transactions on Evolutionary
Computation , 6(1):58-73, 2002.
74. P. Comon. Independent component analysis: A new concept? Signal Processing ,
36(3):287-314, April 1994.
75. P. Comon. Contrasts for multichannel blind deconvolution. IEEE Signal Process-
ing Letters , 3(7):209-211, July 1996.
76. P. Comon and C. Jutten, eds. Separation de Sources, tome 1: Concepts de base et
Analyse en Composantes Independantes . Hermes, France, 2007.
77. J. X. Cong. Historical development of central limit theorem (CLT). Technical
report, Rice University, Houston, TX, February 2003. Disponível on-line em
http://www.stat.rice.edu/
blairc/seminar/Files/julieTalk.pdf
78. T. M. Cover and J. A. Thomas. Elements of Information Theory , 2nd edn. John
Wiley & Sons, Hoboken, NJ, 2006.
79. S. A. Cruces-Alvarez, A. Cichocki, and S.-I. Amari. From blind signal extrac-
tion to blind instantaneous signal separation: Criteria, algorithms, and stability.
IEEE Transactions on Neural Networks , 15(4):859-873, July 2004.
80. G. Cybenko. Approximation by superpositions of a sigmoidal function. Mathe-
matics of Control, Signals, and Systems ( MCSS ), 2(4):303-314, December 1989.
81. C. A. F. da Rocha, O. Macchi, and J. M. T. Romano. An adaptive nonlinear
IIR filter for self-learning equalization. In Proceedings of the IEEE International
Telecommunications Symposium—ITS 94 , Rio de Janeiro, Brazil, 1994, pp. 184-190.
82. D. Dasgupta and Z. Michalewicz, eds. Evolutionary Algorithms in Engineering
Applications . Springer, Berlin, Germany, 2001.
83. D. Dasgupta and F. Nino. Immunological Computation: Theory and Applications .
CRC Press, Boca Raton, FL, 2008.
84. M. L. R. de Campos, S. Werner, and J. A. Apolinário, Jr. Constrained adaptive
filters. Adaptive Antenna Arrays: Trends and Applications , Springer-Verlag, Berlin,
Germany, 2004, pp. 46-62, Chapter 3.
85. L. N. de Castro. Fundamentals of Natural Computing: Basic Concepts, Algorithms,
and Applications . Chapman & Hall/CRC, Boca Raton, FL, 2006.
86. L. N. de Castro and J. Timmis. An artificial immune network for multi-
modal function optimization. In Proceedings of IEEE Conference on Evolutionary
Computation , vol. 1, Washington, DC, 2002, pp. 699-704.
87. L N. de Castro and J. Timmis. Artificial Immune Systems: A New Computational
Intelligence Approach . Springer-Verlag, London, U.K., 2002.
88. L. N. de Castro and F. J. Von Zuben. Learning and optimization using the clonal
selection principle. IEEE Transactions on Evolutionary Computation , 6(3):239-251,
June 2002.
Search WWH ::




Custom Search