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Ordinal margin metric learning and its extension for cross-distribution image data

机译:交叉分布图像数据的有序余量度量学习及其扩展

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摘要

In machine learning and computer vision fields, a wide range of applications, such as human age estimation and head pose recognition, are related to ordinal data in which there exists an order relationship. To perform such ordinal estimations in a desired metric space, in this paper we first propose a novel ordinal margin metric learning (ORMML) method by separating the data classes with a sequence of margins, which makes the classes distribute orderly in the learned metric space. Then, to cope with more realistic scenarios where the data are sampled with each class across multiple distributions, we present a cross distribution variant of ORMML, coined as CD-ORMML, by maximizing the correlation between distributions within each class when conducting metric learning. Finally, extensive experiments on synthetic and publicly available image datasets demonstrate the superiority of the proposed methods in performance to the state-of-the-art methods. (C) 2016 Elsevier Inc. All rights reserved.
机译:在机器学习和计算机视觉领域中,诸如人类年龄估计和头部姿势识别之类的广泛应用与序数数据相关,序数数据中存在顺序关系。为了在期望的度量空间中执行此类序数估计,本文首先提出一种新颖的序数余量度量学习(ORMML)方法,该方法通过将数据类与余量序列分开来使这些类在学习的度量空间中有序分布。然后,为了应对更现实的情况,即在每个类别中跨多个分布对数据进行采样,我们在进行度量学习时,通过最大化每个类别内的分布之间的相关性,提出了一种称为CD-ORMML的ORMML交叉分布变体。最后,在合成和公开可用的图像数据集上进行的大量实验证明了所提出的方法在性能上优于最新方法。 (C)2016 Elsevier Inc.保留所有权利。

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