Universität Bielefeld Electronic Collections animiertes Foto Universität Bielefeld

Access to the Document



Supervised Pixel-Based Texture Classification with Gabor Wavelet Filters

Melendez, Jaime Christian ; Garcia, Miguel Angel ; Puig, Domenec

The 5th International Conference on Computer Vision Systems, 2007
Bielefeld, 21. - 24. März 2007

Download file

Abstract:
This paper proposes an efficient technique for pixel-based texture classification based on multichannel Gabor wavelet filters. The proposed technique is general enough to be applicable to other texture feature extraction methods that also characterize the texture around image pixels through feature vectors. During the training stage, a clustering technique is applied in order to compute a suitable set of prototypes that model every given texture pattern. Multisize evaluation windows are also utilized for improving the accuracy of the classifier near boundaries between regions of different texture. Experimental results with Brodatz compositions show the benefits of the proposed scheme in contrast with alternative approaches in terms of efficiency, memory and classification rates.


Keywords: Texture classification, Gabor filters, clustering, k-nearest neighbors, parameter selection
Institution: Faculty of Technology, Research Groups in Informatics
DDC classification: Data processing, computer science, computer systems

Suggested Citation:
Melendez, Jaime Christian ; Garcia, Miguel Angel ; Puig, Domenec  (2007)  Supervised Pixel-Based Texture Classification with Gabor Wavelet Filters. The 5th International Conference on Computer Vision Systems, 2007


URL: http://biecoll.ub.uni-bielefeld.de/volltexte/2007/60



 Questions or comments: publikationsdienste.ub@uni-bielefeld.de
 Latest update: 15 Feb 2011
 Legal Notice
OPUS-Logo     OAI compliant      BU Logo
OAI-Logo