Title
aZIBO: A New Descriptor Based in Shape Moments and Rotational Invariant Features
Abstract
In this work, a descriptor called a ZIBO (absolute Zernike moments with Invariant Boundary Orientation) that describes the shape of objects using the module of Zernike moments and the edge features obtained from an almost rotational invariant version of the Edge Gradient Co-occurrence Matrix (EGCM) is proposed. The two descriptors obtained, the Zernike module as global descriptor and the new version of EGCM as local one, are used to characterize images from three different datasets, Kimia99, MPEG2 and MPEG7. Later on, the concatenation of both local and global descriptors was evaluated using kNN with City block and Chi-square distance metrics. Also, the descriptors are assessed separately with a weight-based method, being the results obtained compared with the ones reached by the baseline method, ZMEG (Zernike Moment Edge Gradient). Using MPEG7, which is the most challenging dataset, and the weight-based classifier, this proposal obtained a success rate of 78.29%, outperforming the 75.86% achieved by ZMEG method. With the MPEG2 dataset, results were even better with an 81.00% of success rate against 77.25% of ZMEG.
Year
DOI
Venue
2014
10.1109/ICPR.2014.415
ICPR
Keywords
Field
DocType
shape retrieval, descriptor, rotational invariant, zmeg, azibo
Computer vision,Pattern recognition,Matrix (mathematics),Zernike polynomials,Invariant (mathematics),Concatenation,Artificial intelligence,City block,Classifier (linguistics),Mathematics
Conference
ISSN
Citations 
PageRank 
1051-4651
0
0.34
References 
Authors
0
7