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MM
2009
ACM

Face image modeling by multilinear subspace analysis with missing values

14 years 7 months ago
Face image modeling by multilinear subspace analysis with missing values
The main difficulty in face image modeling is to decompose those semantic factors contributing to the formation of the face images, such as identity, illumination and pose. One promising way is to organize the face images in a higher-order tensor with each mode corresponding to one contributory factor. Then, a technique called Multilinear Subspace Analysis (MSA) is applied to decompose the tensor into the mode-n product of several mode matrices, each of which represents one semantic factor. In practice, however, it is usually difficult to obtain such a complete training tensor since it requires a large amount of face images with all possible combinations of the states of the contributory factors. To solve the problem, this paper proposes a method named M2 SA, which can work on the training tensor with massive missing values. Thus M2 SA can be used to model face images even when there are only a small number of face images with limited variations (which will cause missing values in t...
Xin Geng, Kate Smith-Miles, Zhi-Hua Zhou, Liang Wa
Added 28 May 2010
Updated 28 May 2010
Type Conference
Year 2009
Where MM
Authors Xin Geng, Kate Smith-Miles, Zhi-Hua Zhou, Liang Wang
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