Efficient Multiple Instance Metric Learning Using Weakly Supervised Data

M. Law, Yaoliang Yu, R. Urtasun, R. Zemel, E. Xing
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引用次数: 13

Abstract

We consider learning a distance metric in a weakly supervised setting where bags (or sets) of instances are labeled with bags of labels. A general approach is to formulate the problem as a Multiple Instance Learning (MIL) problem where the metric is learned so that the distances between instances inferred to be similar are smaller than the distances between instances inferred to be dissimilar. Classic approaches alternate the optimization over the learned metric and the assignment of similar instances. In this paper, we propose an efficient method that jointly learns the metric and the assignment of instances. In particular, our model is learned by solving an extension of k-means for MIL problems where instances are assigned to categories depending on annotations provided at bag-level. Our learning algorithm is much faster than existing metric learning methods for MIL problems and obtains state-of-the-art recognition performance in automated image annotation and instance classification for face identification.
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基于弱监督数据的高效多实例度量学习
我们考虑在弱监督设置中学习距离度量,其中袋(或集)的实例被标记为袋的标签。一般的方法是将问题表述为多实例学习(MIL)问题,其中度量被学习,以便推断出相似的实例之间的距离小于推断出不相似的实例之间的距离。经典的方法交替优化学习度量和分配相似的实例。在本文中,我们提出了一种联合学习度量和实例分配的有效方法。特别是,我们的模型是通过解决MIL问题的k-means扩展来学习的,在MIL问题中,实例根据包级提供的注释被分配到类别。我们的学习算法比现有的MIL问题的度量学习方法快得多,并且在人脸识别的自动图像标注和实例分类中获得了最先进的识别性能。
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