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Unsupervised Correlation Analysis

机译:无监督相关分析

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摘要

Linking between two data sources is a basic building block in numerous computer vision problems. In this paper, we set to answer a fundamental cognitive question: are prior correspondences necessary for linking between different domains? One of the most popular methods for linking between domains is Canonical Correlation Analysis (CCA). All current CCA algorithms require correspondences between the views. We introduce a new method Unsupervised Correlation Analysis (UCA), which requires no prior correspondences between the two domains. The correlation maximization term in CCA is replaced by a combination of a reconstruction term (similar to autoencoders), full cycle loss, orthogonality and multiple domain confusion terms. Due to lack of supervision, the optimization leads to multiple alternative solutions with similar scores and we therefore introduce a consensus-based mechanism that is often able to recover the desired solution. Remarkably, this suffices in order to link remote domains such as text and images. We also present results on well accepted CCA benchmarks, showing that performance far exceeds other unsupervised baselines, and approaches supervised performance in some cases.
机译:在许多计算机视觉问题中,两个数据源之间的链接是一个基本的构建块。在本文中,我们将回答一个基本的认知问题:在不同域之间进行链接是否需要先验对应关系?领域之间链接的最流行方法之一是规范相关分析(CCA)。当前所有的CCA算法都需要视图之间的对应关系。我们引入了一种新方法无监督相关分析(UCA),该方法不需要两个域之间的先验对应。 CCA中的相关最大化项由重构项(类似于自动编码器),全周期损耗,正交性和多域混淆项的组合代替。由于缺乏监督,优化导致分数相似的多个替代解决方案,因此我们引入了基于共识的机制,该机制通常能够恢复所需的解决方案。值得注意的是,这足以链接文本和图像等远程域。我们还介绍了在公认的CCA基准上得出的结果,表明性能远远超过其他无监督的基准,并且在某些情况下接近受监督的性能。

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