Robust Recognition via Information Theoretic Learning

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This Springer Brief represents a comprehensive review of information theoretic methods for robust recognition. A variety of information theoretic methods have been proffered in the past decade, in a large variety of computer vision applications; this work brings them together, attempts to impart the theory, optimization and usage of information entropy.

The authors resort to a new information theoretic concept, correntropy, as a robust measure and apply it to solve robust face recognition and object recognition problems. For computational efficiency, the brief introduces the additive and multiplicative forms of half-quadratic optimization to efficiently minimize entropy problems and a two-stage sparse presentation framework for large scale recognition problems. It also describes the strengths and deficiencies of different robust measures in solving robust recognition problems.

Author(s): Ran He, Baogang Hu, Xiaotong Yuan, Liang Wang (auth.)
Series: SpringerBriefs in Computer Science
Edition: 1
Publisher: Springer International Publishing
Year: 2014

Language: English
Pages: 110
Tags: Computer Imaging, Vision, Pattern Recognition and Graphics; Image Processing and Computer Vision

Front Matter....Pages i-xi
Introduction....Pages 1-2
M-Estimators and Half-Quadratic Minimization....Pages 3-11
Information Measures....Pages 13-44
Correntropy and Linear Representation....Pages 45-60
ℓ 1 Regularized Correntropy....Pages 61-83
Correntropy with Nonnegative Constraint....Pages 85-102
Back Matter....Pages 103-110