IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Image Data Mining Based on Wavelet Transform for Visualization of the Unique Characteristics of Image Data

Image Data Mining Based on Wavelet Transform for Visualization of the Unique Characteristics of Image Data
View Sample PDF
Author(s): Gebeyehu Belay Gebremeskel (Chongqing University, China), Yi Chai (Chongqing University, China), Zhou Shangbo (Chongqing University, China)and Su Xu (Chongqing University, China)
Copyright: 2017
Pages: 44
Source title: Biometrics: Concepts, Methodologies, Tools, and Applications
Source Author(s)/Editor(s): Information Resources Management Association (USA)
DOI: 10.4018/978-1-5225-0983-7.ch018

Purchase

View Image Data Mining Based on Wavelet Transform for Visualization of the Unique Characteristics of Image Data on the publisher's website for pricing and purchasing information.

Abstract

Mining techniques can play an important role in image decomposition, segmentation, classification and retrieval systems. As image data become more complex and growing at a fast pace, searching valuable information and knowledge implicit become more challenging than ever before. In this chapter, authors proposed a WT based DM techniques to optimize and characterize the unique feature of image retrieval, which is fundamental to optimize informative mathematical representation of image objects. Many software, including data exploratory tools such as DM packages contain fast and efficient programs that perform WT. Wavelets have quickly gained popularity among scientists and engineers, both in theoretical research and in applications. The authors discussed in details and introduced a novel method for image database analysis in different scenarios that foster the wide access of image data.

Related Content

Kavita Kanwar, Nikhil Kumar Goyal. © 2026. 30 pages.
Deepak Gupta, Raghu Nangunuri, Srinivasan Nagaraj, S. Keerthi, Pratish Rawat, C. Umarani, Someshwar Siddi. © 2026. 30 pages.
Arun Agrawal. © 2026. 22 pages.
Aditya Ojha, Sneha Singh, Jyoti Singh Kirar. © 2026. 50 pages.
Prachi Sharma Biswas, Swati Dubey Mishra. © 2026. 34 pages.
Tamara Phillips Fudge. © 2026. 34 pages.
Bayram Cadıl, Gurkan Tuna. © 2026. 34 pages.
Body Bottom