学习视觉数据的多线性结构

Mengjiao MJ Wang, Yannis Panagakis, Patrick Snape, S. Zafeiriou
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引用次数: 15

摘要

统计分解方法对于发现视觉数据的变化模式至关重要。可能最突出的线性分解方法是主成分分析(PCA),它发现数据中的单一变化模式。然而,在实践中,视觉数据表现出几种变化模式。例如,面孔的外观在身份、表情、姿势等方面各不相同。为了从视觉数据中提取这些变化模式,已经开发了几种依赖于多线性(张量)分解(例如高阶SVD)的监督方法,例如TensorFaces。这种方法的主要缺点是既需要对变异模态进行标记,又需要在所有变异模态下的样本数量相同(例如,不同表情、姿势下的同一张脸等)。因此,它们的适用性仅限于组织良好的数据,通常是在良好控制的条件下捕获的。在本文中,我们提出了第一个通用的多元线性方法,据我们所知,它发现了无监督环境下视觉数据的多元线性结构。也就是说,没有标签的存在。我们证明了该方法在两个应用中的适用性,即形状从阴影(SfS)和表达转移。
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Learning the Multilinear Structure of Visual Data
Statistical decomposition methods are of paramount importance in discovering the modes of variations of visual data. Probably the most prominent linear decomposition method is the Principal Component Analysis (PCA), which discovers a single mode of variation in the data. However, in practice, visual data exhibit several modes of variations. For instance, the appearance of faces varies in identity, expression, pose etc. To extract these modes of variations from visual data, several supervised methods, such as the TensorFaces, that rely on multilinear (tensor) decomposition (e.g., Higher Order SVD) have been developed. The main drawbacks of such methods is that they require both labels regarding the modes of variations and the same number of samples under all modes of variations (e.g., the same face under different expressions, poses etc.). Therefore, their applicability is limited to well-organised data, usually captured in well-controlled conditions. In this paper, we propose the first general multilinear method, to the best of our knowledge, that discovers the multilinear structure of visual data in unsupervised setting. That is, without the presence of labels. We demonstrate the applicability of the proposed method in two applications, namely Shape from Shading (SfS) and expression transfer.
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