NEU GRAND LIBRARY
Opening Hours: Monday-Saturday, 08:00-20:00 | E-mail: library@neu.edu.tr
 

You are not logged in Show Basket
  Home     Advanced Search     Back  
  Brief display     MARC Display     Reserve  
An efficient fractal measure for image texture recognition. (Abiyev, Rahib H.,)
Bibliographical information (record 263987)
Help
An efficient fractal measure for image texture recognition.
Author:
Abiyev, Rahib H., Search Author in Amazon Books

Publisher:
IEEE,
ISBN:
978-1-4244-3429-9
Edition:
2010.
Classification:
QA76
URL:

http://library.neu.edu.tr:2048/login?url=http://dx.doi.org/10.1109/ICSCCW.2009.5379454
Detailed notes
    - Fractal measures like fractal dimension (FD), lacunarity, succolarity measure the geometrical complexity of objects and could be used to describe texture information of the images. For this purpose different box counting algorithms were developed to estimate FD. However the existing box-counting methods usually suffer from under counting or over counting, introducing difficulties in obtaining the exact value of the FD. This paper focuses on the box-counting's power in uniquely identifying patterns and presents a new approach which considers the aggregate effects of all the gray levels in the boxes, rather than considering only two gray levels, (min and max) as in the case of traditional differential box-counting method. The proposed method uses new counting measure based on volume percentage of the gray levels inside the boxes. Results from experiments tabulated to depict the improved effect of the proposed method in recognition of the noisy test images from Brodatz Texture and normal test images from CASIA-V3 Iris Databases.
Related links
Items (1)
Barcode
Status
Library
Section
EOL-14
Item available
NEU Grand LibraryOnline (QA76 .A5 2010)
Online electronic

NEAR EAST UNIVERSITY GRAND LIBRARY +90 (392) 223 64 64 Ext:5536. Near East Boulevard, Nicosia, TRNC
This software is developed by NEU Library and it is based on Koha OSS
conforms to MARC21 library data transfer rules.