An EDBoost algorithm towards robust face recognition in JPEG compressed domain

作者:

Highlights:

摘要

In this paper, we describe a novel multiclass boosting algorithm, EDBoost, to achieve robust face recognition directly in JPEG compressed domain. In comparison with existing boosting algorithms, the proposed EDBoost exploits Euclidean distance (ED) to eliminate non-effective weak classifiers in each iteration of the boosted learning, and hence improves both feature selection and classifier learning by using fewer weak classifiers and producing lower error rates. When applied to face recognition, the EDBoost algorithm is capable of selecting the most discriminative DCT features directly in JPEG compressed domain to achieve high recognition performances. In addition, a new DC replacement scheme is also proposed to reduce the effect of illumination changes. In comparison with the existing techniques, the proposed scheme achieves robust face recognition without losing the important information carried by all DC coefficients. Extensive experiments support the conclusion that the proposed algorithm outperforms all representative existing techniques in terms of boosted learning, multiclass classification, lighting effect reduction and face recognition rates.

论文关键词:Discrete cosine transform (DCT),Face recognition,AdaBoost,Fisher's linear discriminant (FLD),Principal component analysis (PCA),Independent component analysis (ICA),Euclidean distance (ED),EDBoost

论文评审过程:Received 5 September 2009, Revised 8 January 2010, Accepted 16 May 2010, Available online 1 June 2010.

论文官网地址:https://doi.org/10.1016/j.imavis.2010.05.005