Box-count analysis of two dimensional images: Methodology, analysis and classification

Milosevic, Nebojsa T., Elston, Guy N., Krstonosic, Bojana and Rajkovic, Nemanja R (2013). Box-count analysis of two dimensional images: Methodology, analysis and classification. In: Proceedings - 19th International Conference on Control Systems and Computer Science, CSCS 2013. 19th International Conference on Control Systems and Computer Science, CSCS 2013, Bucharest, Romania, (306-312). 29 - 31bMay 2013. doi:10.1109/CSCS.2013.16

Attached Files (Some files may be inaccessible until you login with your UQ eSpace credentials)
Name Description MIMEType Size Downloads

Author Milosevic, Nebojsa T.
Elston, Guy N.
Krstonosic, Bojana
Rajkovic, Nemanja R
Title of paper Box-count analysis of two dimensional images: Methodology, analysis and classification
Conference name 19th International Conference on Control Systems and Computer Science, CSCS 2013
Conference location Bucharest, Romania
Conference dates 29 - 31bMay 2013
Proceedings title Proceedings - 19th International Conference on Control Systems and Computer Science, CSCS 2013
Journal name Proceedings - 19th International Conference on Control Systems and Computer Science, CSCS 2013
Place of Publication Piscataway, NJ United States
Publisher I E E E
Publication Year 2013
Year available 2013
Sub-type Fully published paper
DOI 10.1109/CSCS.2013.16
ISBN 9781467361408
Start page 306
End page 312
Total pages 7
Language eng
Abstract/Summary This paper calls attention to the methodology issues of the box-counting method, precisely, to the scaling procedure and significance of the parameter calculated for different presentation of the same image. By using basic terms of fractal analysis and statistical assessment of correlation coefficients of a straight line fit, we showed correct choice for the size of boxes. Moreover, we showed correct box-count dimension in case of neurons with sparse or thick dendrites and small or large cell bodies. In addition, this paper presents our main results relating to the quantitative study and classification of 2D images from the monkey cerebral cortex and the human caudate nucleus.
Subjects 1701 Psychology
2207 Control and Systems Engineering
Keyword Caudate Nucleus
Cerebral cortex
Fractal analysis
Neurons
Scaling range
Q-Index Code E1
Q-Index Status Confirmed Code
Institutional Status UQ

Document type: Conference Paper
Collections: Official 2014 Collection
School of Biomedical Sciences Publications
 
Versions
Version Filter Type
Citation counts: TR Web of Science Citation Count  Cited 0 times in Thomson Reuters Web of Science Article
Scopus Citation Count Cited 4 times in Scopus Article | Citations
Google Scholar Search Google Scholar
Created: Fri, 29 Nov 2013, 05:20:11 EST by System User on behalf of Vision, Touch and Hearing Research Centre