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PCCA: A new approach for distance learning from sparse pairwise constraints

机译:PCCA:从稀疏成对约束中进行远程学习的新方法

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This paper introduces Pairwise Constrained Component Analysis (PCCA), a new algorithm for learning distance metrics from sparse pairwise similarity/dissimilarity constraints in high dimensional input space, problem for which most existing distance metric learning approaches are not adapted. PCCA learns a projection into a low-dimensional space where the distance between pairs of data points respects the desired constraints, exhibiting good generalization properties in presence of high dimensional data. The paper also shows how to efficiently kernelize the approach. PCCA is experimentally validated on two challenging vision tasks, face verification and person re-identification, for which we obtain state-of-the-art results.
机译:本文介绍了成对约束分量分析(Pairwise Constrained Component Analysis,PCCA),这是一种从高维输入空间中稀疏的成对相似/不相似约束中学习距离度量的新算法,该问题大多数现有的距离度量学习方法都不适合。 PCCA学习到一个低维空间的投影,其中数据点对之间的距离遵守所需的约束,在存在高维数据的情况下展现出良好的泛化特性。本文还展示了如何有效地对该方法进行内核化。 PCCA在两个具有挑战性的视觉任务上进行了实验验证,即面部验证和人员重新识别,我们可以从中获得最新的结果。

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