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http://dx.doi.org/10.18204/JISSiS.2015.2.2.064

An Efficient Face Recognition using Feature Filter and Subspace Projection Method  

Lee, Minkyu (Department of Electrical and Electronic Engineering, Yonsei University)
Choi, Jaesung (Department of Electrical and Electronic Engineering, Yonsei University)
Lee, Sangyoun (Department of Electrical and Electronic Engineering, Yonsei University)
Publication Information
Journal of International Society for Simulation Surgery / v.2, no.2, 2015 , pp. 64-66 More about this Journal
Abstract
Purpose : In this paper we proposed cascade feature filter and projection method for rapid human face recognition for the large-scale high-dimensional face database. Materials and Methods : The relevant features are selected from the large feature set using Fast Correlation-Based Filter method. After feature selection, project them into discriminant using Principal Component Analysis or Linear Discriminant Analysis. Their cascade method reduces the time-complexity without significant degradation of the performance. Results : In our experiments, the ORL database and the extended Yale face database b were used for evaluation. On the ORL database, the processing time was approximately 30-times faster than typical approach with recognition rate 94.22% and on the extended Yale face database b, the processing time was approximately 300-times faster than typical approach with recognition rate 98.74 %. Conclusion : The recognition rate and time-complexity of the proposed method is suitable for real-time face recognition system on the large-scale high-dimensional face database.
Keywords
Face Recognition; Feature Filtering; Subspace Projection;
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