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A regularized point-to-manifold distance metric for multi-view multi-manifold learning

机译:用于多视图多流形学习的正则化点对角距离度量

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摘要

In this paper, we propose a regularized point-to-manifold distance metric to measure the distance between the unknown query object and object-specific manifolds for the task multi-view multi-manifold learning. Our metric determine the class of query object based on the class of objects that have smallest average geodesic distance from it. To do this, we propose our proposed method with the two features: 1. We automatically discover the object-specific manifolds. In this section, we focus on the fundamental problem of efficiently selecting a uniform class-consistent neighbors from all available poses for graph-based multi-manifold learning methods in a supervised manner. Also, we extract the most distinctive exemplars from the manifold of each object that cover the possible variations on pose angles. To make a distinction between some object-specific pose-inconsistent and object-inconsistent pose-consistent that may be very close, we utilize the total variation regularized least squares problem to representing each object in a weighted sum of its class-consistent neighbors under different poses. 2. We use the information of k objects to decide about the class of query object. We measure the distance between the unknown object and k exemplars of each object-specific manifold to find the closest manifold as the class of query object. Numerical experiments on several benchmark multi-view datasets are reported, which provide excellent support to the proposed methods. In the mean, our neighborhood graph can improve the SH-NGC and UTDTV, as new supervised multi-manifold learning and unsupervised multi-view multi-manifold learning methods, more than 2.6 and 7%, respectively. Also, in object recognition, our proposed method achieves more than 5% better results respect to the best result of state-of-the-art graph-based manifold learning methods.
机译:在本文中,我们提出了一个正则化点对角距离度量来测量任务多视图多流转学习的未知查询对象和对象特定歧管之间的距离。我们的度量标准基于具有与其具有最小平均测地距的对象类别的查询对象。为此,我们提出了我们的建议方法,其中包含了两个功能:1。我们自动发现特定于对象的歧管。在本节中,我们专注于有效地选择来自所有可用的姿势的统一类一致邻居的基本问题以监督方式以图形的多流形学习方法为基础的姿势。而且,我们从每个物体的歧管中提取最独特的示例,该歧管覆盖姿势角度的可能变化。要区分某些对象的构成姿态和对象 - 不一致的姿势,可以非常接近,我们利用总变化规则化最小二乘问题,以表示其类一致邻居的加权和中的每个对象姿势。 2.我们使用K对象的信息来决定查询对象的类。我们测量每个对象特定歧管的未知对象和k平方之间的距离,以找到最接近的歧管作为查询对象的类。报告了几个基准多视图数据集上的数值实验,为该所提出的方法提供了出色的支持。在平均值的情况下,我们的邻居图可以改善SH-NGC和UTDTV,作为新的监督多歧管学习和无监督的多视图多流形学习方法,分别超过2.6%和7%。此外,在对象识别中,我们所提出的方法达到基于最先进的图形的歧管学习方法的最佳结果,实现了超过5%的结果。

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