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LOCALITY-PRESERVING COMPLEX-VALUED GAUSSIAN PROCESS LATENT VARIABLE MODEL FOR ROBUST FACE RECOGNITION

机译:稳健面部识别的局部保留复数高斯过程潜变模模型

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Learning a low-dimensional image representation yields effective and efficient face recognition. The use of such a representation helps to weaken the curse of dimensionality. However, the traditional facial representation method is not robust against partial occlusions or variations of expression. To solve this problem, this paper proposes a more reliable, complex-valued representation of facial image. The robust representation is based on the proposed locality-preserving complex-valued Gaussian process latent variable model (LP-CGPLVM). In the LP-CGPLVM, the Euler formula is utilized to transform original facial images into the complex domain. A proper complex GP is employed to model the mapping between the complex-valued high-dimensional data and the corresponding low-dimensional representation. Moreover, the locality-preserving constraint is taken into consideration to preserve the neighborhood data structure. The experimental results indicate that our proposed method is robust against partial occlusions and various facial expressions.
机译:学习低维图像表示产生有效和有效的面部识别。使用这种代表有助于削弱维度的诅咒。然而,传统的面部代表方法对部分闭塞或表达变型不稳定。为了解决这个问题,本文提出了一种更可靠,复杂的面部图像的值表示。鲁棒的表示基于所提出的地区保留的复值高斯工艺潜在变量模型(LP-CGPLVM)。在LP-CGPLVM中,欧拉公式用于将原始面部图像转换为复杂域。采用适当的复杂GP来模拟复值高维数据和相应的低维表示之间的映射。此外,考虑了邻域数据结构的局部保留约束。实验结果表明我们所提出的方法对部分闭塞和各种面部表情具有鲁棒性。

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