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Spatial regularization in subspace learning for face recognition: implicit vs. explicit

机译:子空间学习中用于面部识别的空间正则化:隐式与显式

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In applying traditional statistical method to face recognition, each original face image is often vectorized as a vector. But such a vectorization not only leads to high-dimensionality, thus small sample size (SSS) problem, but also loses the original spatial relationship between image pixels. It has been proved that spatial regularization (SR) is an effective means to compensate the loss of such relationship and at the same time, and mitigate SSS problem by explicitly imposing spatial constraints. However, SR still suffers from two main problems: one is high computational cost due to high dimensionality and the other is the selection of the key regularization factors controlling the spatial regularization and thus learning performance. Accordingly, in this paper, we provide a new idea, coined as implicit spatial regularization (ISR), to avoid losing the spatial relationship between image pixels and deal with SSS problem simultaneously for face recognition. Different from explicit spatial regularization (ESR), which introduces directly spatial regularization term and is based on vector representation, the proposed ISR constrains spatial smoothness within each small image region by reshaping image and then executing 2D-based feature extraction methods. Specifically, we follow the same assumption as made in SSSL (a typical ESR method) that a small image region around an image pixel is smooth, and reshape each original image into a new matrix whose each column corresponds to a vectorized small image region, and then we extract features from the newly-formed matrix using any off-the-shelf 2D-based method which can take the relationship between pixels in the same row or column into account, such that the original spatial relationship within the neighboring region can be greatly retained. Since ISR does not impose constraint items, compared with ESR, ISR not only avoids the selection of the troublesome regularization parameter, but also greatly reduces computational cost. Experimental results on four face databases show that the proposed ISR can achieve competitive performance as SSSL but with lower computational cost. (C) 2015 Elsevier B.V. All rights reserved.
机译:在将传统的统计方法应用于面部识别中,每个原始面部图像通常被矢量化为矢量。但是,这样的矢量化不仅导致高维,从而导致样本大小(SSS)问题小,而且失去了图像像素之间的原始空间关系。已经证明,空间正则化(SR)是一种有效的手段,可以补偿这种关系的损失,同时通过显式施加空间约束来缓解SSS问题。但是,SR仍然存在两个主要问题:一个是由于高维而导致的高计算成本,另一个是选择控制空间正则化并因此影响学习性能的关键正则化因子。因此,在本文中,我们提出了一种新的思想,即隐式空间正则化(ISR),以避免丢失图像像素之间的空间关系并同时处理人脸识别的SSS问题。与直接引入空间正则项并基于矢量表示的显式空间正则化(ESR)不同,所提出的ISR通过重塑图像然后执行基于2D的特征提取方法来约束每个小图像区域内的空间平滑度。具体来说,我们遵循与SSSL(典型的ESR方法)相同的假设,即图像像素周围的小图像区域是平滑的,然后将每个原始图像重塑为一个新的矩阵,该矩阵的每一列对应于矢量化的小图像区域,并且然后,我们可以使用任何基于2D的现成方法从新形成的矩阵中提取特征,该方法可以考虑同一行或同一列中像素之间的关系,从而可以大大提高相邻区域内的原始空间关系保留。由于ISR不施加约束项,因此与ESR相比,ISR不仅避免了麻烦的正则化参数的选择,而且大大降低了计算成本。在四个人脸数据库上的实验结果表明,所提出的ISR可以达到与SSSL相当的性能,但计算成本较低。 (C)2015 Elsevier B.V.保留所有权利。

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