GA-SVM and Mutual Information based Frequency Feature Selection for Face Recognition
Main Article Content
Abstract
The dimensionality of existing data make it difficult to deploy any information to identify features that discriminate between the classes of interest. Feature selection involves reducing the number of features, removes irrelevant, noisy and redundant data without significantly decreasing the prediction accuracy of the classifier. An efficient feature selection and classification technique for face recognition is presented in this paper. Genetic Algorithms (GAs) for feature selection and Support Vector Machine (SVM) for classification are incorporated in the proposed technique. The proposed GAs-SVM technique has two purposes in this research: Selecting of the optimal feature subset and Selecting of the kernel parameters for SVM classifier. The input feature vector for the GAs-SVM are extracted by using the Discrete Cosine Transform (DCT). We evaluate its efficiency compared to the recently proposed feature selection algorithm based on mutual information. The results show that the proposed approach is promising, it is able to select small subsets and still improve the classification accuracy.
Article Details
How to Cite
Amine, A., Akadi, A. el, Rziza, M., & Aboutajdine, D. (2009). GA-SVM and Mutual Information based Frequency Feature Selection for Face Recognition. INFOCOMP Journal of Computer Science, 8(1), 20–29. Retrieved from https://infocomp.dcc.ufla.br/index.php/infocomp/article/view/247
Section
Articles
Upon receipt of accepted manuscripts, authors will be invited to complete a copyright license to publish the paper. At least the corresponding author must send the copyright form signed for publication. It is a condition of publication that authors grant an exclusive licence to the the INFOCOMP Journal of Computer Science. This ensures that requests from third parties to reproduce articles are handled efficiently and consistently and will also allow the article to be as widely disseminated as possible. In assigning the copyright license, authors may use their own material in other publications and ensure that the INFOCOMP Journal of Computer Science is acknowledged as the original publication place.