Research Article Open Access

3-DIMENSIONAL EAR RECOGNITION BASED ITERATIVE CLOSEST POINT WITH STOCHASTIC CLUSTERING MATCHING

Khamiss Masaoud S. Algabary1, Khairuddin Omar1 and Md Jan Nordin1
  • 1 University Kebangsaan Malaysia, Malaysia

Abstract

Ear recognition is a new technology and future trend for personal identification. However, the false detection rate and matching recognition are very challenging due to the ear complex geometry. The Scope of the study is to introduced a combination of Iterative Closest Point (ICP) and Stochastic Clustering Matching (SCM) algorithm for 3D ears matching based on biometrics field with a good steadiness to reduce the false detection rate. The corresponding ear extracts from the side range image and characterized by 3D features. The proposed method used matlab simulation and defined the average detection time 35ms and an identification similarity is 98.25% for the collection of different database. The result shows that the proposed combined method outperforms than the existing of ICP or SCM in terms of detection time and accuracy in training.

Journal of Computer Science
Volume 10 No. 3, 2014, 477-483

DOI: https://doi.org/10.3844/jcssp.2014.477.483

Submitted On: 12 August 2013 Published On: 29 November 2013

How to Cite: Algabary, K. M. S., Omar, K. & Nordin, M. J. (2014). 3-DIMENSIONAL EAR RECOGNITION BASED ITERATIVE CLOSEST POINT WITH STOCHASTIC CLUSTERING MATCHING. Journal of Computer Science, 10(3), 477-483. https://doi.org/10.3844/jcssp.2014.477.483

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Keywords

  • Iterative Closest Point (ICP)
  • Stochastic Clustering Matching (SCM)
  • Preprocessing
  • 3D Ears Matching
  • Ear Identification