Unsupervised One-Class Learning for Automatic Outlier Removal

W. Liu, G. Hua, John R. Smith
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引用次数: 100

Abstract

Outliers are pervasive in many computer vision and pattern recognition problems. Automatically eliminating outliers scattering among practical data collections becomes increasingly important, especially for Internet inspired vision applications. In this paper, we propose a novel one-class learning approach which is robust to contamination of input training data and able to discover the outliers that corrupt one class of data source. Our approach works under a fully unsupervised manner, differing from traditional one-class learning supervised by known positive labels. By design, our approach optimizes a kernel-based max-margin objective which jointly learns a large margin one-class classifier and a soft label assignment for inliers and outliers. An alternating optimization algorithm is then designed to iteratively refine the classifier and the labeling, achieving a provably convergent solution in only a few iterations. Extensive experiments conducted on four image datasets in the presence of artificial and real-world outliers demonstrate that the proposed approach is considerably superior to the state-of-the-arts in obliterating outliers from contaminated one class of images, exhibiting strong robustness at a high outlier proportion up to 60%.
自动离群值去除的无监督单类学习
异常值在许多计算机视觉和模式识别问题中普遍存在。自动消除实际数据收集中的异常值散射变得越来越重要,特别是对于受互联网启发的视觉应用。在本文中,我们提出了一种新的单类学习方法,该方法对输入训练数据的污染具有鲁棒性,并且能够发现破坏一类数据源的异常值。我们的方法在完全无监督的方式下工作,与传统的由已知正标签监督的单类学习不同。通过设计,我们的方法优化了一个基于核的最大边际目标,该目标共同学习了一个大边际单类分类器和一个针对内线和离群点的软标签分配。然后设计一个交替优化算法来迭代地改进分类器和标记,仅在几次迭代中获得可证明的收敛解。在存在人工异常值和真实异常值的四个图像数据集上进行的大量实验表明,所提出的方法在消除受污染的一类图像中的异常值方面明显优于最先进的方法,在高达60%的高异常值比例下表现出很强的鲁棒性。
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