Search
 New @ Now
Products
 FnTs in Business  FnTs in Technology
For Authors
 Review Updates
 Authors Advantages
 Download Style Files
 Submit an article
 

Kernel Methods in Computer Vision



Author(s): Christoph H. Lampert

Source:
    Journal:Foundations and Trends® in Computer Graphics and Vision
    ISSN Print:1572-2740,  ISSN Online:1572-2759
    Publisher:Now Publishers
    Volume 4 Number 3,

Document Type: Article
Pages: 93 (193-285)
DOI: 10.1561/0600000027

Abstract:

Over the last years, kernel methods have established themselves as powerful tools for computer vision researchers as well as for practitioners. In this tutorial, we give an introduction to kernel methods in computer vision from a geometric perspective, introducing not only the ubiquitous support vector machines, but also less known techniques for regression, dimensionality reduction, outlier detection, and clustering. Additionally, we give an outlook on very recent, non-classical techniques for the prediction of structure data, for the estimation of statistical dependency, and for learning the kernel function itself. All methods are illustrated with examples of successful application from the recent computer vision research literature.