4 CONCLUSIONS
In this work, we have proposed an efficient and ro-
bust face detection system that uses our strong super-
classifier based on Adaboost cascades with an adapt-
able number of weak classifiers which is depending
on the illumination conditions of the captured image.
In the future, we aim to replace in our system
the global-lighting average value which computation
is currently based on the processed image with a di-
rect real-world lighting measure recorded by sensitive
sensors.
REFERENCES
Ahonen, T., Hadid, A., and Pietikainen, M. (2006). Face
descritpion with local binary patterns: application to
face recognition. IEEE Transactions on Pattern Anal-
ysis and Machine Intelligence, 28(12):2037–2041.
Beveridge, J. R., Bolme, D. S., Draper, B. A., Givens, G. H.,
Liu, Y. M., and Phillips, P. J. (2010). Quantifying
how lighting and focus affect face recognition per-
formance. In IEEE Computer Society Conference on
Computer Vision and Pattern Recognition Workshops,
pages 74–81.
Crowley, J. L. (1997). Vision for man machine interaction.
Robotics and Autonomous Systems, 19(3-4):347–359.
Fei-Fei, L., Andreetto, M., and Ranzato,
M. A. (2003). The Caltech - 101 Ob-
ject Categories dataset. Available online:
http://www.vision.caltech.edu/feifeili/Datasets.htm.
Gundimada, S., Tao, L., and Asari, V. (2004). Face detec-
tion technique based on intensity and skin color dis-
tribution. In IEEE International Conference in Image
Processing, volume 2, pages 1413–1416.
Guo, B., Lam, K.-M., Lin, K.-H., and Siu, W.-C. (2003).
Human face recognition based on spatially weighted
Hausdorff distance. Pattern Recognition Letters, 24(1-
3):499–507.
Heisele, B., Serre, T., and Poggio, T. (2007). A component-
based framework for face detection and identification.
International Journal of Computer Vision, 74(2):167–
181.
Huang, D.-Y., Lin, C.-J., and Hu, W.-C. (2011). Learning-
based face detection by adaptive switching of skin
color models and AdaBoost under varying illumina-
tion. Journal of Information Hiding and Multimedia
Signal Processing, 2(3):2073–4212.
Hurley, D. J., Harbab-Zavar, B., and Nixon, M. S. (2008).
Handbook of Biometrics, chapter The ear as a biomet-
ric, pages 131–150. Springer-Verlag.
Julian, P., Dehais, C., Lauze, F., Charvillat, V., Bartoli, A.,
and Choukroun, A. (2010). Automatic hair detection
in the wild. In IEEE International Conference on Pat-
tern Recognition, pages 4617–4620.
Kawato, S. and Ohya, J. (2000). Real-time detection of nod-
ding and head-shaking by directly detecting and track-
ing the ”Between-Eye”. In IEEE International Con-
ference on Automatic Face and Gesture Recognition,
pages 40–45.
Li, Y., Lai, J. H., and Yuen, P. C. (2006). Multi-template
ASM method for feature points detection of facial im-
age with diverse expressions. In IEEE International
Conference on Automatic Face and Gesture Recogni-
tion, pages 435–440.
Lin, K., Huang, J., Chen, J., and Zhou, C. (2008). Real-time
eye detection in video streams. In IEEE International
Conference on Natural Computation, volume 6, pages
193–197.
Olszewska, J. I., DeVleeschouwer, C., and Macq, B. (2008).
Multi-feature vector flow for active contour track-
ing. In IEEE International Conference on Acoustics,
Speech and Signal Processing, pages 721–724.
Rowley, H. A., Baluja, S., and Kanade, T. (1998). Neural
network-based face detection. IEEE Transactions on
Pattern Analysis and Machine Intelligence, 20(1):23–
38.
Sun, H.-M. (2010). Skin detection for single images using
dynamic skin color modeling. Pattern Recognition,
43(4):1413–1420.
Viola, P. and Jones, M. J. (2004). Robust real-time face
detection. International Journal of Computer Vision,
57(2):137–154.
Woodward, D. L., Pundlik, S. J., Lyle, J. R., and Miller,
P. E. (2010). Periocular region appearance cues for
biometric identification. In IEEE Computer Society
Conference on Computer Vision and Pattern Recogni-
tion Workshops, pages 162–169.
Yokoyama, T., Yagi, Y., and Yachida, M. (1998). Active
contour model for extracting human faces. In IEEE
International Conference on Pattern Recognition, vol-
ume 1, pages 673–676.
Zhao, W., Chellappa, R., Phillips, P. J., and Rosenfeld, A.
(2003). Face recogntion: A literature survey. ACM
Computing Surveys, 35(4):399–458.
LIGHTING-VARIABLE ADABOOST BASED-ON SYSTEM FOR ROBUST FACE DETECTION
497