Feature Extraction in Content-Based Image Retrieval

Title
Feature Extraction in Content-Based Image Retrieval
Publication Date
2015
Author(s)
Foley, Jacob
Kwan, Paul H
Editor
Editor(s): Mehdi Khosrow-Pour
Type of document
Entry In Reference Work
Language
en
Entity Type
Publication
Publisher
IGI Global
Place of publication
Hershey, United States of America
Edition
3
DOI
10.4018/978-1-4666-5888-2.ch583
UNE publication id
une:16647
Abstract
In recent decades, the increased usage and availability of digital cameras has created a vast amount of new information captured in the form of digital images. These images have been given an unprecedented level of accessibility through the Internet and sharing in social media. It is difficult to represent these images using text descriptions due to the amount of labour required to annotate large collections and the occurrence of inconsistencies in annotations caused by the differing perceptions of the individual annotators. This makes searching images using text-based methods ineffective (Rui, Huang & Chang, 1999). New techniques in Content Based Image Retrieval (CBIR) are being developed to accommodate indexing and searching images using Feature Extraction. Feature extraction algorithms use the content of digital images to produce Feature Vectors, which represent the important details of an image in a concise form and allow for complex analysis of the source image. ... In this chapter, we examine the most common features for indexing and searching images. This provides an introduction to the concepts used in Feature Extraction. For further information on specific techniques and their implementations, refer to the Additional Reading section.
Link
Citation
Encyclopedia of Information Science and Technology, p. 5897-5905
ISBN
9781466658882
Start page
5897
End page
5905

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