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Incremental PCA-LDA algorithm

机译:增量PCA-LDA算法

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In this paper a recursive algorithm of calculating the discriminant features of the PCA-LDA procedure is introduced. This algorithm computes the principal components of a sequence of vectors incrementally without estimating the covariance matrix (so covariance-free) and at the same time computing the linear discriminant directions along which the classes are well separated. Two major techniques are used sequentially in a real time fashion in order to obtain the most efficient and linearly discriminative components. This procedure is done by merging the runs of two algorithms based on principal component analysis (PCA) and linear discriminant analysis (LDA) running sequentially. This algorithm is applied to face recognition problem. Simulation results on different databases showed high average success rate of this algorithm compared to PCA and LDA algorithms. The advantage of the incremental property of this algorithm compared to the batch PCA-LDA is also shown.
机译:本文介绍了一种递归算法,用于计算PCA-LDA过程的判别特征。该算法在不估计协方差矩阵的情况下(不存在协方差)递增地计算向量序列的主分量,并同时计算沿其很好地分离类别的线性判别方向。为了获得最有效和线性区分的成分,实时地依次使用了两种主要技术。通过合并顺序运行的基于主成分分析(PCA)和线性判别分析(LDA)的两种算法的运行来完成此过程。该算法适用于人脸识别问题。在不同数据库上的仿真结果表明,与PCA和LDA算法相比,该算法具有较高的平均成功率。还显示了与批处理PCA-LDA相比,此算法的增量属性的优点。

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