Published March 21, 2012
| Version 6689
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Optimized Facial Features-based Age Classification
Authors/Creators
Description
The evaluation and measurement of human body
dimensions are achieved by physical anthropometry. This research
was conducted in view of the importance of anthropometric indices
of the face in forensic medicine, surgery, and medical imaging. The
main goal of this research is to optimization of facial feature point by
establishing a mathematical relationship among facial features and
used optimize feature points for age classification. Since selected
facial feature points are located to the area of mouth, nose, eyes and
eyebrow on facial images, all desire facial feature points are extracted
accurately. According this proposes method; sixteen Euclidean
distances are calculated from the eighteen selected facial feature
points vertically as well as horizontally. The mathematical
relationships among horizontal and vertical distances are established.
Moreover, it is also discovered that distances of the facial feature
follows a constant ratio due to age progression. The distances
between the specified features points increase with respect the age
progression of a human from his or her childhood but the ratio of the
distances does not change (d = 1 .618 ) . Finally, according to the
proposed mathematical relationship four independent feature
distances related to eight feature points are selected from sixteen
distances and eighteen feature point-s respectively. These four feature
distances are used for classification of age using Support Vector
Machine (SVM)-Sequential Minimal Optimization (SMO) algorithm
and shown around 96 % accuracy. Experiment result shows the
proposed system is effective and accurate for age classification.
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References
- Abu Sayeed Md. Sohail and Prabir Bhattacharya, "Detection of Facial Feature Point Using Anthropometric Face Model", Signal Processing for Image Enhancement and Multimedia Processing, Multimedia System and Application, Volume 31,Part III, 2008.
- Udeni Jaysinghe & Anuja Dhrmaratne, "Matching Facial Image using Age Related Morphing Changes", World Academy of Science, Engineering and Technology 06, 2009.
- M. Maghami, R. Zoroofi, B. Araabi, M. Shiva and E. Vahedi, "Kalman Filter Tracking for Facial Expression Recognition using Noticeable Feature Selection", ICIAS, pp. 587-590, Nov 2007.
- T. Yun L. Guan, "Automatic face detection in video sequences using local normalization and optimal adaptive correlation techniques", Patten Recognition, pp. 1859-1868, Sep 2009
- M. Valstar and M. Pantic, "Fully Automatic Facial Action Unit Detection and Temporal Analysis", IEEE Int'l Conf. on Computer Vision and Pattern Recognition (CVPR'06)(2006).
- N. Ramanathan and R. Chellappa, "Modeling age progression in young faces," in CVPR -06: Proceedings of the 2006 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. Washington, DC, USA: IEEE Computer Society, 2006, pp. 387-394.
- L.G Farkas, "Anthropometry of the Head and Face". Raven Press, New York, 1994.
- Xhang, L., Lenders, P.: "Knowledge-based Eye Detection for Human Face Recognition." In: Fourth IEEE International Conference on Knowledge-Based Intelligent Engineering Systems and Allied Technologies, Vol. 1(2000) , pp. 117-120, 2000
- Rizon, M., Kawaguchi, T. "Automatic Eye Detection Using Intensity and Edge Information." In: Proceedings TENCON, Vol. 2(2000), pp. 415-420, 2000 [10] Phimoltares, S., Lursinsap, C., Chamnongthai, "Locating Essential Facial Features Using Neural Visual Model." In: First International Conference on Machine Learning and Cybernetics pp. 1914-1919,2002 [11] Spors, S., Rebenstein, "A Real-time Face Tracker for Color Video." In: IEEE International Conference on Acoustics, Speech and Signal Processing, Vol. 3 (2001) 1493-1496 [12] Perez, C. A., Palma, A., Holzmann C. A., Pena, " Face and Eye Tracking Algorithm Based on Digital Image Processing." In: IEEE International Conference on Systems, Man and Cybernetics, Vol. 2 (2001) 1178-1183 [13] Marini, R. "Subpixellic Eyes Detection.", In: IEEE International Conference on Image Analysis and Processing (1999) 496-501 [14] Chandrasekaran, V., Liu, Z. Q. "Facial Feature Detection Using Compact Vector-field Canonical Templates." In: IEEE International Conference on Systems, Man and Cybernetics, Vol. 3 (1997) 2022- 2027 [15] Jaimies and N. Sebe, "Multimodal human computer interaction: A survey," Proceeding of the IEEE International Workshop on Human Computer Interaction in conjunction with ICCV, pp.1-15, Beijing, China, October 2005.] [16] X. Geng, Z.-H. Zhou, and K. Smith-Miles, "Automatic age estimation based on facial aging patterns," IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 29, no. 12, pp. 2234-2240, 2007 [17] S. Yan, M. Liu, T. S. Huang, Extracting Age Information from Local Spatially Flexible Patches, ICASSP, 2008. [18] X. Zhuang, X. Zhou, M. Hasegawa-Johnson, and T. S. Huang, Face Age Estimation Using Patch-based Hidden Markov Model Supervectors, ICPR, 2008. [19] S. Yan, X. Zhou, M. Liu, M. Hasegawa-Johnson, T. S. Huang, Regression from Patch-Kernel, ICPR 2008. [20] A. Lanitis, Comparative Evaluation of Automatic Age-Progression Methodologies, EURASIP Journal on Advances in Signal Processing, volume 8, issue 2, Jan. 2008. [21] A. Lanitis, C. J. Taylor, T. F. Cootes, Modeling the process of ageing in face images, ICCV, 1999. [22] FG-NET Aging Database, http://www.prima.inrialpes.fr/FGnet/, 2002.