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Recent Advances in Face Recognition Techniques: A Survey

Rajveer Kour, Tripti Sharma

Abstract


Face recognition has been a challenge for applications with real time implementation. Though significant advances have already been made in the past decade but it’s affectivity against the uncontrolled environments like partial occlusion, illumination problem and pose estimation have fallen drastically. The previous studies used various methods and soft computing tools for a learning based approach towards overcoming the enlisted challenges. Thus, in this paper we investigate the principal techniques to provide an in depth study as the building block of the current literature.

 

Cite this Article:
Rajveer Kour, Tripti Sharma. Recent Advances in Face Recognition Techniques: A Survey. Journal of Artificial Intelligence Research & Advances. 2015; 2(1): 28–33p.


Keywords


Face recognition, techniques, literature survey

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References


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