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Incremental maximum margin criterion based on eigenvalue decomposition updating algorithm

机译:基于特征值分解更新算法的增量最大余量判据

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摘要

Dimensionality reduction has been proven to be a critical data processing step for face recognition. Maximum margin criterion (MMC) is one of the popular supervised dimensionality reduction algorithms. However, the original implementation of MMC is not suitable for incremental learning problem. In this paper, we first propose an eigenvalue decomposition updating algorithm (EVDU) for symmetric matrix. Then, based on our proposed EVDU technique, we propose an incremental MMC (EVDU-IMMC) method which can update the discriminant vectors of MMC when new samples are inserted into the training set. Experiments on ORL and PIE face databases show that the proposed EVDU-IMMC gives the same performance as the batch MMC with much lower computational complexity. The experimental results also show that our proposed EVDU-IMMC gives better performance than other IMMC method in terms of recognition accuracy and computational efficiency.
机译:降维已被证明是面部识别的关键数据处理步骤。最大余量准则(MMC)是流行的监督降维算法之一。但是,MMC的原始实现不适用于增量学习问题。在本文中,我们首先提出一种对称矩阵的特征值分解更新算法(EVDU)。然后,基于我们提出的EVDU技术,我们提出了一种增量MMC(EVDU-IMMC)方法,该方法可以在将新样本插入训练集中时更新MMC的判别向量。在ORL和PIE人脸数据库上进行的实验表明,所提出的EVDU-IMMC具有与批处理MMC相同的性能,且计算复杂度低得多。实验结果还表明,我们提出的EVDU-IMMC在识别精度和计算效率方面比其他IMMC方法具有更好的性能。

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