Přístupnostní navigace
E-application
Search Search Close
Publication detail
ŠTRBA, M. HEROUT, A. HAVEL, J.
Original Title
Handwritten Digits Recognition Improved by Multiresolution Classifier Fusion
Type
article in a collection out of WoS and Scopus
Language
English
Original Abstract
One common approach to construction of highly accurate classifiers for hadwritten digit recognition is fusion of several weaker classifiers into a compound one, which (when meeting some constraints) outperforms all the individual fused classifiers. This paper studies the possibility of fusing classifiers of different kinds (Self-Organizing Maps, Randomized Trees, and AdaBoost with MB-LBP weak hypotheses) constructed on training sets resampled to different resolutions. While it is common to select one resolution of the input samples as the ``ideal one'' and fuse classifiers constructed for it, this paper shows that the accuracy of classification can be improved by fusing information from several scales.
Keywords
Digit Recognition, Classifier Fusion, Multiresolution
Authors
ŠTRBA, M.; HEROUT, A.; HAVEL, J.
RIV year
2011
Released
1. 6. 2011
Publisher
Springer Verlag
Location
Berlin
ISBN
978-3-642-21256-7
Book
Proceedings of IbPRIA 2011, LNCS
Pages from
726
Pages to
733
Pages count
8
BibTex
@inproceedings{BUT76284, author="Miroslav {Štrba} and Adam {Herout} and Jiří {Havel}", title="Handwritten Digits Recognition Improved by Multiresolution Classifier Fusion", booktitle="Proceedings of IbPRIA 2011, LNCS", year="2011", pages="726--733", publisher="Springer Verlag", address="Berlin", isbn="978-3-642-21256-7" }