Digital Signal Processing Reference
In-Depth Information
47.
I. Pitas and A.N. Venetsanopoulos,
Nonlinear Digital Filters: Principles and Appli-
cations
. Hingham, MA: Kluwer, 1990.
48.
F. Hampel, E. Ronchetti, P. Rousseeuw, and W. Stahel,
Robust Statistics
, New York:
John Wiley & Sons, 1986.
49.
V. Barnett, The ordering of multivariate data,
J. R. Stat. Soc. A,
139(3), 318-354,
1976.
50.
I. Pitas and P. Tsakalides, Multivariate ordering in color image restoration,
IEEE
Trans. Circuits Syst. Video Technol.,
1(3), 247-259, Sept. 1991.
51.
J. Astola, P. Haavisto, and Y. Neuvo, Vector median filters,
Proc. IEEE,
78(4),
678-689, April 1990.
52.
T.S. Huang, G.J. Yang, and G.Y. Tang, A fast two-dimensional median filtering
algorithm,
IEEE Trans. Acoust. Speech Signal Process.,
ASSP-27, 13-18, 1979.
53.
A. Papoulis,
Probability, Random Variables and Stochastic Processes
, New York:
McGraw-Hill, 1984.
54.
P.J. Huber,
Robust Statistics
, New York: John Wiley & Sons, 1981.
55.
E.L. Lehman,
Theory of Point Estimation
, New York: John Wiley & Sons, 1983.
56.
M.T. Orchard and C.A. Bouman, Color quantization of images,
IEEE Trans. Signal
Process.,
39(12), 2677-2690, Dec. 1991.
57.
A. Del Bimbo,
Visual Information Retrieval
, San Francisco: Morgan Kaufmann,
1999.
58.
G. Salton and M.J. McGill,
Introduction to Modern Information Retrieval
, New York:
McGraw-Hill, 1983.
59.
R.R. Korfhage,
Information Storage and Retrieval
, New York: John Wiley & Sons,
1997.
60.
D.D. Lewis, Reuters-21578 text categorization test collection, Distribu-
tion 1.0, 1997. Available at http://kdd.ics.uci.edu/databases/reuters21578/
reuters21578.html.
61.
W.H. Equitz, A new vector quantization clustering algorithm,
IEEE Trans. Acoust.
Speech Signal Process.,
37(10), 1568-1575, Oct. 1989.
62.
J. Makhoul, S. Roucos, and H. Gish, Vector quantization in speech coding,
Proc.
IEEE,
73(11), 1551-1588, Nov. 1985.
63.
R.O. Duda and P.E. Hart,
Pattern Classification and Scene Analysis
, New York: John
Wiley & Sons, 1973.
64.
D. Alahakoon, S.K. Halgamuge, and B. Srinivasan, Dynamic self-organizing
maps with controlled growth for knowledge discovery,
IEEE Trans. Neural Net-
works,
11(3), 601-614, May 2000.
65.
B. Fritzke, Growing cell structure: a self-organizing network for supervised and
unsupervised learning,
Neural Networks,
7, 1441-1460, 1994.
66.
T. Martinetz and K. Schulten, A neural-gas network learns topologies, in
Arti-
ficial Neural Networks,
T. Kohonen, K. Makisara, O. Simula, and J. Kangas, Eds.,
Amsterdam: Elsevier, 1991, 397-402.
67.
J. Blackmore and R. Miikkulainen,Visualizing high-dimensional structure with
the incremental grid growing neural network, in
Proc. Twelfth Int. Conf. Machine
Learning
, 55-63, San Francisco: Morgan Kaufmann, 1995.
68.
J. Vesanto and E. Alhoniemi, Clustering of the self-organizing map,
IEEE Trans.
Neural Networks,
11(3), 586-600, May 2000.
p
and its use in multivariate image esti-
mation,
IEEE Trans. Circuits Syst. Video Technol.,
1(2), 197-209, June 1991.
69.
R.C. Hardie and G. Arce, Ranking in
R
Search WWH ::
Custom Search