Content-Based Image and Video Retrieval

by ;
Format: Hardcover
Pub. Date: 2002-05-01
Publisher(s): Kluwer Academic Pub
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Summary

The amount of audiovisual information available in digital format has grown exponentially in recent years. Gigabytes of new images, audio and video clips are generated and stored everyday. Most audiovisual content can be accessed through the Internet, which is a very large, unstructured, distributed information database. Searching and retrieving multimedia information from the Web has been limited to the use of keywords.Over the past decade, many researchers, mostly from the Image Processing and Computer Vision community, have started to investigate possible ways of retrieving visual information based solely on its contents. Instead of being manually annotated using keywords, images and video clips would be indexed by their own visual content, such as color, texture, objects' shape and movement, among others. Research in the field of content-based image and video retrieval (CBIVR) is very active. Many research groups in leading universities, research institutes, and companies are actively working in this field. Their ultimate goal is to enable users to retrieve the desired image or video clip among massive amounts of visual data in a fast, efficient, semantically meaningful, friendly, and location-independent manner. Applications of CBIVR systems include digital libraries, video-on-demand systems, geographic information systems, astronomical research, satellite observation systems, and criminal investigation systems, among many others.Content-Based Image And Video Retrieval addresses the basic concepts and techniques for designing content-based image and video retrieval systems. It also discusses a variety of design choices for the key components of these systems. This book gives a comprehensive survey of the content-based image retrieval systems, including several content-based video retrieval systems. The survey includes both research and commercial content-based retrieval systems. Content-Based Image And Video Retrieval, includes pointers to two hundred representative bibliographic references on this field, ranging from survey papers to descriptions of recent work in the area, entire books and more than seventy websites. Finally, the book presents a detailed case study of designing MUSE'a content-based image retrieval system developed at Florida Atlantic University in Boca Raton, Florida.Content-Based Image And Video Retrieval is designed to meet the needs of a professional audience composed of researchers, and practitioners in industry and graduate-level students in Computer Science and Engineering.

Table of Contents

Preface ix
Acknowledgments xiii
Introduction
1(6)
Fundamentals of Content-Based Image and Video Retrieval
7(8)
Basic Concepts
7(2)
A Typical CBIVR System Architecture
9(2)
The User's Perspective
11(1)
Summary
12(3)
Designing a Content-Based Image Retrieval System
15(20)
Feature Extraction and Representation
15(12)
Feature Classification and Selection
16(2)
Color-Based Features
18(1)
Color Models
18(3)
Representation of Color Properties
21(2)
Other Parameters
23(1)
Additional Remarks
24(1)
Texture-Based Features
25(1)
Shape-Based Features
26(1)
Specialized Features
26(1)
Similarity Measurements
27(1)
Dimension Reduction and High-dimensional Indexing
28(1)
Clustering
28(1)
The Semantic Gap
29(1)
Learning
29(1)
Relevance Feedback (RF)
30(1)
Benchmarking CBVIR Solutions
31(1)
Design Questions
32(2)
Summary
34(1)
Designing a Content-Based Video Retrieval System
35(12)
The Problem
35(1)
The Solution
36(1)
Video Parsing
36(5)
Shot Boundary Detection
37(4)
Scene Boundary Detection
41(1)
Video Abstraction and Summarization
41(1)
Key-frame Extraction
41(1)
``Highlight'' Sequences
42(1)
Video Content Representation, Indexing, and Retrieval
42(1)
Video Browsing Schemes
43(1)
Examples of Video Retrieval Systems
44(2)
VideoQ
44(1)
Screening Room
45(1)
Virage
46(1)
Summary
46(1)
A Survey of Content-Based Image Retrieval Systems
47(56)
Remco C. Veltkamp
Mirela Tanase
Introduction
47(2)
Criteria
49(1)
Systems
49(50)
ADL (Alexandria Digital Library)
49(1)
AMORE (Advanced Multimedia Oriented Retrieval Engine)
50(1)
ASSERT
51(1)
BDLP (Berkeley Digital Library Project)
51(1)
Blobworld
52(1)
CANDID (Comparison Algorithm for Navigating Digital Image Databases)
53(1)
C-bird (Content-Based Image Retrieval from Digital libraries)
54(1)
CBVQ (Content-Based Visual Query)
55(1)
Chabot
56(1)
CHROMA (Colour Hierarchical Representation Oriented Management Architecture)
57(1)
DrawSearch
58(1)
FIDS (Flexible Image Database System)
59(1)
FIR (Formula Image Retrieval)
59(1)
FOCUS (Fast Object Color-based Query System)
60(1)
ImageRETRO (Image RETrieval by Reduction and Overview)
61(2)
ImageRover
63(1)
ImageScape
64(1)
JACOB (Just A COntent Based query system for video databases)
65(1)
LCPD (Leiden 19th Century Portrait Database)
66(1)
MARS (Multimedia Analysis and Retrieval System)
67(2)
MetaSEEk
69(1)
MIR (Multimodal Information Retrieval System)
70(1)
NETRA
71(1)
Photobook
72(2)
Picasso
74(2)
PicHunter
76(1)
PicSOM
77(1)
PicToSeek
78(1)
QBIC (Query By Image Content)
79(2)
Quicklook2
81(2)
Shoebox
83(1)
SIMBA (Search Images By Appearance)
83(1)
SMURF (Similarity-based Multimedia Retrieval Framework)
84(1)
SQUID (Shape Queries Using Image Databases)
85(1)
Surfimage
86(1)
SYNAPSE (SYNtactic Appearance Search Engine)
87(1)
TODAI (Typographic Ornament Database And Identification)
88(1)
VIR Image Engine
89(1)
VisualSEEk
90(2)
WebSEEk
92(1)
WebSeer
92(2)
WISE (Wavelet Image Search Engine)
94(5)
Summary and Conclusions
99(4)
Case Study: Muse
103(60)
Overview of the System
103(1)
The User's Perspective
104(5)
The RF Mode
109(6)
Features
109(2)
Probabilistic Model
111(4)
The RFC Mode
115(13)
More and Better Features
117(1)
Clustering
118(1)
Learning
119(4)
A Numerical Example
123(4)
Display Update Strategy
127(1)
Experiments and Results
128(28)
Testing the System in RF Mode
130(1)
Preliminary Tests
131(1)
Increasing Database Size
132(1)
Improving the Color-Based Feature Set
133(1)
Evaluating the Influence of the Number of Images per Iteration
134(1)
Testing the Relationship Between the User's Style and System Performance
135(1)
A Note About Convergence
135(1)
Testing Features and Distance Measurements
136(1)
Goals and Methodology
137(3)
Color-Based Methods
140(1)
Shape or Texture Only
141(1)
Combining Color, Texture, and Shape
141(1)
Distance Measures
142(1)
Testing the Clustering Algorithm
143(5)
Testing the System in RFC Mode
148(1)
Preliminary Tests
148(2)
Tests Using a Small Database
150(2)
Increasing Database Size
152(1)
Mixed Mode Tests
153(3)
Summary
156(3)
Future Work
159(4)
References 163(18)
Index 181

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