Probabilistic learning for fully automatic face recognition across pose

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Recent pose invariant methods try to model the subject specific appearance change across pose. For this, however, almost all of the existing methods require a perfect alignment between a gallery and a probe image. In this paper we present a pose invariant face recognition method that does not require the facial landmarks to be detected as such and is able to work with only single training image of the subject. We propose novel extensions by introducing to use a more robust feature description as opposed to pixel-based appearances. Using such features we put forward to synthesize the non-frontal views to frontal. Furthermore, using local kernel density estimation, instead of commonly used normal density assumption, is suggested to derive the prior models. Our method does not require any strict alignment between gallery and probe images which makes it particularly attractive as compared to the existing state of the art methods. Improved recognition across a wide range of poses has been achieved using these extensions.

论文关键词:Face recognition,Recognition across pose,Bayesian face modeling,Face-GLOH-Signature

论文评审过程:Received 8 March 2009, Revised 19 July 2009, Accepted 26 July 2009, Available online 6 August 2009.

论文官网地址:https://doi.org/10.1016/j.imavis.2009.07.008