A Framework for Robust Subspace Learning

被引:422
作者
Fernando De la Torre
Michael J. Black
机构
[1] Universitat Ramon LLull,Department of Communications and Signal Theory, La Salle School of Engineering
[2] Brown University,Department of Computer Science
关键词
principal component analysis; singular value decomposition; learning; robust statistics; subspace methods; structure from motion; robust PCA; robust SVD;
D O I
10.1023/A:1023709501986
中图分类号
学科分类号
摘要
Many computer vision, signal processing and statistical problems can be posed as problems of learning low dimensional linear or multi-linear models. These models have been widely used for the representation of shape, appearance, motion, etc., in computer vision applications. Methods for learning linear models can be seen as a special case of subspace fitting. One draw-back of previous learning methods is that they are based on least squares estimation techniques and hence fail to account for “outliers” which are common in realistic training sets. We review previous approaches for making linear learning methods robust to outliers and present a new method that uses an intra-sample outlier process to account for pixel outliers. We develop the theory of Robust Subspace Learning (RSL) for linear models within a continuous optimization framework based on robust M-estimation. The framework applies to a variety of linear learning problems in computer vision including eigen-analysis and structure from motion. Several synthetic and natural examples are used to develop and illustrate the theory and applications of robust subspace learning in computer vision.
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页码:117 / 142
页数:25
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