Applied graph theory in computer vision and pattern recognition

Author(s)

    • Kandel, Abraham
    • Bunke, Horst
    • Last, Mark

Bibliographic Information

Applied graph theory in computer vision and pattern recognition

Abraham Kandel, Horst Bunke, Mark Last (eds.)

(Studies in computational intelligence, v. 52)

Springer, c2007

Available at  / 4 libraries

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Note

Includes bibliographical references

Description and Table of Contents

Description

This book presents novel graph-theoretic methods for complex computer vision and pattern recognition tasks. It presents the application of graph theory to low-level processing of digital images, presents graph-theoretic learning algorithms for high-level computer vision and pattern recognition applications, and provides detailed descriptions of several applications of graph-based methods to real-world pattern recognition tasks.

Table of Contents

Applied Graph Theory for Low Level Image Processing and Segmentation.- Multiresolution Image Segmentations in Graph Pyramids.- A Graphical Model Framework for Image Segmentation.- Digital Topologies on Graphs.- Graph Similarity, Matching, and Learning for High Level Computer Vision and Pattern Recognition.- How and Why Pattern Recognition and Computer Vision Applications Use Graphs.- Efficient Algorithms on Trees and Graphs with Unique Node Labels.- A Generic Graph Distance Measure Based on Multivalent Matchings.- Learning from Supervised Graphs.- Special Applications.- Graph-Based and Structural Methods for Fingerprint Classification.- Graph Sequence Visualisation and its Application to Computer Network Monitoring and Abnormal Event Detection.- Clustering of Web Documents Using Graph Representations.

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