Deep Manifold Learning of Symmetric Positive Definite Matrices with Application to Face Recognition

Zhen Dong, Su Jia, Chi Zhang, Mingtao Pei, Yuwei Wu
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引用次数: 40

Abstract

In this paper, we aim to construct a deep neural network which embeds high dimensional symmetric positive definite (SPD) matrices into a more discriminative low dimensional SPD manifold. To this end, we develop two types of basic layers: a 2D fully connected layer which reduces the dimensionality of the SPD matrices, and a symmetrically clean layer which achieves non-linear mapping. Specifically, we extend the classical fully connected layer such that it is suitable for SPD matrices, and we further show that SPD matrices with symmetric pair elements setting zero operations are still symmetric positive definite. Finally, we complete the construction of the deep neural network for SPD manifold learning by stacking the two layers. Experiments on several face datasets demonstrate the effectiveness of the proposed method.
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对称正定矩阵的深度流形学习及其在人脸识别中的应用
本文的目的是构造一个深度神经网络,该网络将高维对称正定矩阵嵌入到更具判别性的低维对称正定流形中。为此,我们开发了两种类型的基本层:降低SPD矩阵维数的2D全连接层和实现非线性映射的对称清洁层。具体地说,我们扩展了经典的全连通层,使其适用于SPD矩阵,并进一步证明了具有对称对元置零运算的SPD矩阵仍然是对称正定的。最后,我们通过叠加两层完成了SPD流形学习的深度神经网络的构建。在多个人脸数据集上的实验证明了该方法的有效性。
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