
Kernel Methods in Computer Vision
Christoph H. Lampert(Author)
now publishers Inc
1st Edition
Published on 4. September 2009
Book
Paperback/Softback
112 pages
978-1-60198-268-1 (ISBN)
Description
Few developments have influenced the field of computer vision in the last decade more than the introduction of statistical machine learning techniques. Particularly kernel-based classifiers, such as the support vector machine, have become indispensable tools, providing a unified framework for solving a wide range of image-related prediction tasks, including face recognition, object detection and action classification. By emphasizing the geometric intuition that all kernel methods rely on, Kernel Methods in Computer Vision provides an introduction to kernel-based machine learning techniques accessible to a wide audience including students, researchers and practitioners alike, without sacrificing mathematical correctness. It covers not only support vector machines but also less known techniques for kernel-based regression, outlier detection, clustering and dimensionality reduction. Additionally, it offers an outlook on recent developments in kernel methods that have not yet made it into the regular textbooks: structured prediction, dependency estimation and learning of the kernel function. Each topic is illustrated with examples of successful application in the computer vision literature, making Kernel Methods in Computer Vision a useful guide not only for those wanting to understand the working principles of kernel methods, but also for anyone wanting to apply them to real-life problems.
More details
Series
Language
English
Place of publication
Hanover
United States
Target group
Professional and scholarly
Dimensions
Height: 234 mm
Width: 156 mm
Thickness: 6 mm
Weight
170 gr
ISBN-13
978-1-60198-268-1 (9781601982681)
DOI
10.1561/0600000027
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Schweitzer Classification
Content
1: Overview 2: Introduction to Kernel Methods 3: Kernels for Computer Vision 4: Classification 5: Outlier Detection 6: Regression 7: Dimensionality Reduction 8: Clustering 9: Non-Classical Kernel Methods 10: Learning the Kernel. References.