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Multi-view Deep Network for Cross-View Classification

机译:跨视图分类的多视图深度网络

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Cross-view recognition that intends to classify samples between different views is an important problem in computer vision. The large discrepancy between different even heterogenous views make this problem quite challenging. To eliminate the complex (maybe even highly nonlinear) view discrepancy for favorable cross-view recognition, we propose a multi-view deep network (MvDN), which seeks for a non-linear discriminant and view-invariant representation shared between multiple views. Specifically, our proposed MvDN network consists of two sub-networks, view-specific sub-network attempting to remove view-specific variations and the following common sub-network attempting to obtain common representation shared by all views. As the objective of MvDN network, the Fisher loss, i.e. the Rayleigh quotient objective, is calculated from the samples of all views so as to guide the learning of the whole network. As a result, the representation from the topmost layers of the MvDN network is robust to view discrepancy, and also discriminative. The experiments of face recognition across pose and face recognition across feature type on three datasets with 13 and 2 views respectively demonstrate the superiority of the proposed method, especially compared to the typical linear ones.
机译:旨在对不同视图之间的样本进行分类的跨视图识别是计算机视觉中的一个重要问题。不同甚至异质的观点之间的巨大差异,使这个问题变得非常具有挑战性。为了消除复杂的(甚至可能是高度非线性的)视图差异以实现有利的跨视图识别,我们提出了多视图深度网络(MvDN),该网络寻求在多个视图之间共享的非线性判别和视图不变表示。具体来说,我们提出的MvDN网络由两个子网组成:尝试删除特定于视图的变体的特定于视图的子网络,以及试图获取所有视图共享的共同表示的后续公共子网络。作为MvDN网络的目标,从所有视图的样本中计算出Fisher损失(即瑞利商目标),以指导整个网络的学习。结果,来自MvDN网络最顶层的表示形式对于查看差异是有鲁棒性的,并且也是可区分的。在分别具有13个视图和2个视图的三个数据集上进行的跨姿势的人脸识别和跨特征类型的人脸识别实验分别证明了该方法的优越性,特别是与典型的线性方法相比。

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