Face recognition using direct, weighted linear discriminant analysis and modular subspaces

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摘要

We present a modular linear discriminant analysis (LDA) approach for face recognition. A set of observers is trained independently on different regions of frontal faces and each observer projects face images to a lower-dimensional subspace. These lower-dimensional subspaces are computed using LDA methods, including a new algorithm that we refer to as direct, weighted LDA or DW-LDA. DW-LDA combines the advantages of two recent LDA enhancements, namely direct LDA (D-LDA) and weighted pairwise Fisher criteria. Each observer performs recognition independently and the results are combined using a simple sum-rule. Experiments compare the proposed approach to other face recognition methods that employ linear dimensionality reduction. These experiments demonstrate that the modular LDA method performs significantly better than other linear subspace methods. The results also show that D-LDA does not necessarily perform better than the well-known principal component analysis followed by LDA approach. This is an important and significant counterpoint to previously published experiments that used smaller databases. Our experiments also indicate that the new DW-LDA algorithm is an improvement over D-LDA.

论文关键词:Face recognition,Linear discriminant analysis,Dimensionality reduction,Pairwise Fisher criteria

论文评审过程:Received 30 April 2003, Revised 19 July 2004, Accepted 19 July 2004, Available online 22 September 2004.

论文官网地址:https://doi.org/10.1016/j.patcog.2004.07.001