图像合成、分析与识别的张量代数方法

M. Alex O. Vasilescu, Demetri Terzopoulos
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引用次数: 3

摘要

我们回顾了用于图像合成、分析和识别的多线性(张量)代数框架。自然图像是由成像过程、照明和场景几何形状之间的多因素相互作用产生的。数值多线性代数提供了一种原则性的方法来解纠缠和显式地表示图像集成的基本因素或模式。我们的多线性图像建模技术采用传统矩阵奇异值分解(SVD)的张量扩展,称为n模SVD。这导致了我们的主成分分析(PCA)的多线性泛化和独立成分分析(ICA)的新多线性泛化。作为示例应用,我们解决当前在计算机图形学、计算机视觉和模式识别方面的重大问题。特别是,我们解决了基于图像的渲染,特别是纹理表面图像的多线性合成,用于不同的视点和照明,以及在不同脸型,视图和照明条件下的面部图像的多线性分析和识别。这些新的多线性(张量)代数方法优于传统的线性(矩阵)代数方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Tensor Algebraic Approach to Image Synthesis, Analysis and Recognition
We review our multilinear (tensor) algebraic framework for image synthesis, analysis, and recognition. Natural images result from the multifactor interaction between the imaging process, the illumination, and the scene geometry. Numerical multilinear algebra provides a principled approach to disentangling and explicitly representing the essential factors or modes of image ensembles. Our multilinear image modeling technique employs a tensor extension of the conventional matrix singular value decomposition (SVD), known as the N-mode SVD. This leads us to a multilinear generalization of principal components analysis (PCA) and a novel multilinear generalization of independent components analysis (ICA). As example applications, we tackle currently significant problems in computer graphics, computer vision, and pattern recognition. In particular, we address image-based rendering, specifically the multilinear synthesis of images of textured surfaces for varying viewpoint and illumination, as well as the multilinear analysis and recognition of facial images under variable face shape, view, and illumination conditions. These new multilinear (tensor) algebraic methods outperform their conventional linear (matrix) algebraic counterparts.
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