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Face recognition using average invariant factor

机译:使用平均不变因子的人脸识别

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The recent developed intrinsic discriminate analysis (IDA) demonstrates superior recognition rate compared with classical methods such as PCA and LDA. In this paper, we not only re-prove the core theorem of IDA from a new perspective, but also define the Average Invariant Factor (AIF) that generalizes IDA. Two new algorithms for face recognition are built upon the AIF by using SVD and QR decomposition. Moreover, this new formulation facilitates the kernel extensions for the recognition algorithms, which relax the linear assumption for IDA. The presented kernel based AIF algorithms also significantly lower down the computational expenses of the original IDA method. A series of experiments on YALE and ORL sets demonstrate higher performance in terms of recognition rate and efficiency compared with classical statistical analysis methods (e.g., PCA, KPCA and 2DPCA) and the IDA algorithm.
机译:与经典方法(例如PCA和LDA)相比,最新开发的内在判别分析(IDA)表现出更高的识别率。在本文中,我们不仅从新的角度重新证明了IDA的核心定理,而且定义了概括IDA的平均不变因子(AIF)。通过使用SVD和QR分解,在AIF上建立了两种新的人脸识别算法。此外,这种新的公式简化了识别算法的内核扩展,从而简化了IDA的线性假设。提出的基于内核的AIF算法还大大降低了原始IDA方法的计算费用。与传统的统计分析方法(例如PCA,KPCA和2DPCA)和IDA算法相比,在YALE和ORL集上进行的一系列实验显示出更高的识别率和效率。

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