A Face Recognition Method on Mobile Terminals Based on Manifold Learning


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A face recognition method on mobile terminals based on manifold learning was proposed. Firstly, the modified Snake model was set in order to improve the accuracy and effectiveness of facial feature point labeling. Then, the partial mapping method was carried out to map the face images to a subspace for further analysis. Finally, the nearest neighbor classifier was enhanced to show the recognition results. The experimental results indicate that the performance of this method is excellent. It is boasts a higher accuracy rate and bigger robustness than the ordinary methods.



Edited by:

Jun Wang




Y. G. Li et al., "A Face Recognition Method on Mobile Terminals Based on Manifold Learning", Applied Mechanics and Materials, Vol. 610, pp. 307-311, 2014

Online since:

August 2014




* - Corresponding Author

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