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Improving Local Learning for Object Categorization by Exploring the Effects of Ranking

机译:通过探索排名效果来改善本地学习对象分类

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Local learning for classification is useful in dealing with various vision problems. One key factor for such approaches to be effective is to find good neighbors for the learning procedure. In this work, we describe a novel method to rank neighbors by learning a local distance function, and meanwhile to derive the local distance function by focusing on the high-ranked neighbors. The two aspects of considerations can be elegantly coupled through a well-defined objective function, motivated by a supervised ranking method called P-Norm Push. While the local distance functions are learned independently, they can be reshaped altogether so that their values can be directly compared. We apply the proposed method to the Caltech-101 dataset, and demonstrate the use of proper neighbors can improve the performance of classification techniques based on nearest-neighbor selection.
机译:本地学习分类对于处理各种视力问题非常有用。这种方法有效的一个关键因素是为学习程序找到良好的邻居。在这项工作中,我们通过学习局部距离功能来描述一种对邻居进行排名的新方法,并且同时通过专注于高级邻居来导出局部距离功能。考虑因素的两个方面可以通过明确定义的目标函数来典范,由称为P-NOMP推动的监督排名方法激励。虽然本地距离函数独立学习,但它们可以完全重新装入,以便可以直接比较它们的值。我们将所提出的方法应用于CALTECH-101数据集,并证明使用适当的邻居可以提高基于最近邻的选择的分类技术的性能。

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