Discriminative common vectors based on the Gram-Schmidt reorthogonalization for the small sample size problem

Y. Wen, Lianghua He, Yue Lu
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Abstract

The discriminative common vectors (DCV) algorithm shows better face recognition effects than some commonly used linear discriminant algorithms, which uses the subspace methods and the Gram-Schmidt orthogonalization (GSO) procedure to obtain the DCV. However, the Gram-Schmidt technique may produce a set of vectors which is far from orthogonal so that sometimes the orthogonality may be lost completely. Hence, the effectiveness of the DCV is also decreased. In this paper, we proposed an improved DCV method based on the GSO. For obtaining an accurate projection onto the corresponding space, the orthogonal basis problem is usually solved with the Gram-Schmidt process with reorthogonalization. Thus, the effectiveness of the DCV can be improved and the experimental results show that the proposed method is better for the small sample size problem as compared to the DCV.
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基于Gram-Schmidt再正交化的小样本量问题判别公向量
判别公向量(discriminative common vector, DCV)算法采用子空间方法和Gram-Schmidt正交化(GSO)方法得到的判别公向量(discriminative common vector, DCV)算法,其人脸识别效果优于一些常用的线性判别算法。然而,Gram-Schmidt技术可能产生一组远离正交的向量,以至于有时会完全失去正交性。因此,DCV的有效性也降低了。在本文中,我们提出了一种基于GSO的改进DCV方法。为了得到相应空间上的精确投影,正交基问题通常采用重新正交化的Gram-Schmidt过程来解决。实验结果表明,该方法比DCV方法更适合小样本量问题。
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