5 RESULTS
Several tests were performed to determine an ideal
threshold value for the conversion of the images into
binary figures. In a scale from 0 (black) to 1 (white),
0.38 was empirically determined as a good value to
most of the images, but to darker images 0.22 was a
better value. The test was done through the use of
100 images (50 male and 50 female) with two differ-
ent threshold values from (Department, 2003). The
results are shown in Table 1.
Table 1: Face verification results with 2 threshold values.
Threshold 0.22 0.38
Weighting Correct Detection 81 % 48 %
Mask False Detection 25 % 21 %
Classical Correct Detection 83 % 35 %
MLP-BP False Detection 28 % 17 %
PPS-WNN Correct Detection 85% 63 %
ϕ
2
(.) False Detection 15 % 23 %
PPS-WNN Correct Detection 92 % 51 %
ϕ
5
(.) False Detection 5 % 11 %
The best result for T=0.22 is explained by the low
brightness and consequently low contrast of the im-
ages in the set. All the images used are at an 8 bit
gray scale and 540 x 640 pixels. All tests were per-
formed in an IBM -compatible PC, Pentium 4 with
2.4 Ghz processor, 1Gb RAM memory.
6 CONCLUSIONS
The face recognition is an active research area for se-
curity. However, it is still a complex and challenging
research topic because the human face may change its
appearance due to the internal variations such as facial
expressions, beards, mustaches, hair styles, glasses,
ageing, surgery and the external distortions such as
scale, lighting, position and face occlusion. In this
paper, we showed the basic concepts and technics of
Polynomial Powers of Sigmoid and how to build mul-
tidimensional wavelet neural networks starting from
this definition. We chose this application due to the
complexity of image processing problems. The ob-
tained results suppose to validate the new method for
new and future applications in the artificial intelli-
gence area.
ACKNOWLEDGEMENTS
We would like to thank the Coordenac¸
˜
ao de
Aperfeic¸oamento de Pessoal de N
´
ıvel Superior
(CAPES) process number 3634/06 −0 and the Lis-
bon University that supported this investigation.
REFERENCES
Avci, E. (2007). An expert system based on wavelet neural
network-adaptive norm entropy for scale invariant tex-
ture classification. Expert Systems with Applications,
32:919–926.
Daubechies, I. (1992). Ten lecture on wavelets. Society for
Industrial and Applied Mathematics (SIAM).
Department, P. (2003). Psycological image collection at
stirling university. http://pics.psych.stir.ac.uk.
Fan, J. and Wang, X. F. (2005). A wavelet view of small-
world networks. IEEE Transactions on Circuits and
Systems, pages 1–4.
Funahashi, K. (1989). On the approximate realization of
continuos mappings by neural networks. Neural Net-
works, (2):183–192.
Gonzalez, R. C. and Woods, R. E. (2002). Digital Image
Processing. Prentice-Hall, Inc.
Jiang, X., Mahadevan1, S., and Adeli, H. (2007). Bayesian
wavelet packet denoising for structural system identi-
fication. Struct. Control Health Monit., 14:333–356.
Lin, C. and Fan, K.-C. (2001). Triangle basead approuch to
detection of human face. Pattern Recognition Society,
pages 941–944.
Marar, J. F. (1997). Polinomios Pot
ˆ
encias de Sigmoide
(PPS): Uma nova T
´
ecnica para Aproximac¸
˜
ao de
Func¸
˜
oes, Construc¸
˜
ao de Wavenets e suas aplicac¸
˜
oes
em Processamento de Imagens e Sinais. PhD thesis,
Universidade Federal de Pernambuco - Departamento
de Inform
´
atica.
Marar, J. F., Costa, D., Pinheiro, O., and Filho, E. (2004).
Adaptative techniques for the human faces detection.
In 6th International Conference on Enterprise Infor-
mation Systems, volume 2, pages 465–468.
Misra, B. B., Dash, P. K., and Panda, G. (2007). Pattern
classification using local linear wavelet neural net-
work. International Conference on Information and
Communication Technology, pages 92–95.
Oussar, Y. and Dreyfus, G. (2000). Initialization by se-
lection for wavelet neural traing. Neurocomputing,
34:131–143.
Pati, Y. and Krishnaprasad, P. (1993). Analysis and syn-
thesis of feedforward neural networks using discrete
affine wavelet transformations. IEEE Transactions on
Neural Networks, 4(1):73–85.
Zhang, H. and Pu, J. (2006). A novel self-adaptive control
framework via wavelet neural netwok. In 6th World
congress on intelligent control and automation, pages
2254–2258.
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