Abstract
The recognition of human faces, especially those with different orientations is a challenging and important problem in image analysis and classification. This paper proposes an effective scheme for rotation invariant face recognition using Log-Polar Transform and Discrete Cosine Transform combined features. The rotation invariant feature extraction for a given face image involves applying the log- polar transform to eliminate the rotation effect and to produce a row shifted log-polar image. The discrete cosine transform is then applied to eliminate the row shift effect and to generate the low-dimensional feature vector. A PSO-based feature selection algorithm is utilized to search the feature vector space for the optimal feature subset. Evolution is driven by a fitness function defined in terms of maximizing the between-class separation (scatter index). Experimental results, based on the ORL face database using testing data sets for images with different orientations; show that the proposed system outperforms other face recognition methods. The overall recognition rate for the rotated test images being 97%, demonstrating that the extracted feature vector is an effective rotation invariant feature set with minimal set of selected features.
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CITATION STYLE
Abdel-kader, R. F., Ramadan, R. M., & Rizk, R. Y. (2008). Rotation Invariant Face Recognition Based on Hybrid LPT/DCT Features. International Journal of Computer Systems Science and Engineering, 3(3), 188–193. Retrieved from http://www.waset.org/journals/ijcsse/v3/v3-3-30.pdf
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