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E-Book

Zhang Multimedia Data Mining

A Systematic Introduction to Concepts and Theory
1. Auflage 2010
ISBN: 978-1-58488-967-0
Verlag: Taylor & Francis
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)

A Systematic Introduction to Concepts and Theory

E-Book, Englisch, 320 Seiten

Reihe: Chapman & Hall/CRC Data Mining and Knowledge Discovery Series

ISBN: 978-1-58488-967-0
Verlag: Taylor & Francis
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)



Collecting the latest developments in the field, Multimedia Data Mining: A Systematic Introduction to Concepts and Theory defines multimedia data mining, its theory, and its applications. Two of the most active researchers in multimedia data mining explore how this young area has rapidly developed in recent years.

The book first discusses the theoretical foundations of multimedia data mining, presenting commonly used feature representation, knowledge representation, statistical learning, and soft computing techniques. It then provides application examples that showcase the great potential of multimedia data mining technologies. In this part, the authors show how to develop a semantic repository training method and a concept discovery method in an imagery database. They demonstrate how knowledge discovery helps achieve the goal of imagery annotation. The authors also describe an effective solution to large-scale video search, along with an application of audio data classification and categorization.

This novel, self-contained book examines how the merging of multimedia and data mining research can promote the understanding and advance the development of knowledge discovery in multimedia data.

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Zielgruppe


Computer scientists and researchers in mathematics, statistics, and computer engineering.

Weitere Infos & Material


INTRODUCTION
Introduction
Defining the Area

A Typical Architecture of a Multimedia Data Mining System
The Content and the Organization of This Book

The Audience of This Book

Further Readings

THEORY AND TECHNIQUES
Feature and Knowledge Representation for Multimedia Data

Basic Concepts
Feature Representation
Knowledge Representation
Statistical Mining Theory and Techniques

Bayesian Learning
Probabilistic Latent Semantic Analysis
Latent Dirichlet Allocation for Discrete Data Analysis
Hierarchical Dirichlet Process

Applications in Multimedia Data Mining

Support Vector Machines

Maximum Margin Learning for Structured Output Space

Boosting

Multiple Instance Learning
Semi-Supervised Learning
Soft Computing-Based Theory and Techniques

Characteristics of the Paradigms of Soft Computing

Fuzzy Set Theory

Artificial Neural Networks
Genetic Algorithms
MULTIMEDIA DATA MINING APPLICATION EXAMPLES
Image Database Modeling—Semantic Repository Training

Background

Related Work

Image Features and Visual Dictionaries
a-Semantics Graph and Fuzzy Model for Repositories

Classification-Based Retrieval Algorithm

Experiment Results

Image Database Modeling—Latent Semantic Concept Discovery

Background and Related Work

Region-Based Image Representation

Probabilistic Hidden Semantic Model

Posterior Probability-Based Image Mining and Retrieval

Approach Analysis

Experimental Results

A Multimodal Approach to Image Data Mining and Concept Discovery

Background
Related Work

Probabilistic Semantic Model
Model-Based Image Annotation and Multimodal Image Mining and Retrieval
Experiments
Concept Discovery and Mining in a Video Database

Background

Related Work

Video Categorization

Query Categorization

Experiments

Concept Discovery and Mining in an Audio Database

Background and Related Work

Feature Extraction

Classification Method

Experimental Results
References
Index
An Introduction and Summary appear in each chapter.



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