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首页> 外文期刊>Journal of applied mathematics >Fast Second-Order Orthogonal Tensor Subspace Analysis for Face Recognition
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Fast Second-Order Orthogonal Tensor Subspace Analysis for Face Recognition

机译:快速二阶正交张量子空间分析用于人脸识别

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Tensor subspace analysis (TSA) and discriminant TSA (DTSA) are two effective two-sided projection methods for dimensionality reduction and feature extraction of face image matrices. However, they have two serious drawbacks. Firstly, TSA and DTSA iteratively compute the left and right projection matrices. At each iteration, two generalized eigenvalue problems are required to solve, which makes them inapplicable for high dimensional image data. Secondly, the metric structure of the facial image space cannot be preserved since the left and right projection matrices are not usually orthonormal. In this paper, we propose the orthogonal TSA (OTSA) and orthogonal DTSA (ODTSA). In contrast to TSA and DTSA, two trace ratio optimization problems are required to be solved at each iteration. Thus, OTSA and ODTSA have much less computational cost than their nonorthogonal counterparts since the trace ratio optimization problem can be solved by the inexpensive Newton-Lanczos method. Experimental results show that the proposed methods achieve much higher recognition accuracy and have much lower training cost.
机译:张量子空间分析(TSA)和判别TSA(DTSA)是两种有效的双面投影方法,可用于降维和提取人脸图像矩阵。但是,它们有两个严重的缺点。首先,TSA和DTSA迭代计算左右投影矩阵。在每次迭代中,需要解决两个广义特征值问题,这使得它们不适用于高维图像数据。其次,由于左投影矩阵和右投影矩阵通常不正交,因此无法保留面部图像空间的度量结构。在本文中,我们提出了正交TSA(OTSA)和正交DTSA(ODTSA)。与TSA和DTSA相比,每次迭代都需要解决两个跟踪比率优化问题。因此,OTSA和ODTSA的计算成本比非正交的要低得多,因为可以通过廉价的Newton-Lanczos方法解决痕量比优化问题。实验结果表明,该方法具有较高的识别精度和较低的训练成本。

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