DocumentCode :
2220414
Title :
Handwritten digit recognition using state-of-the-art techniques
Author :
Liu, Cheng-Lin ; Nakashima, Kazuki ; Sako, Hiroshi ; Fujisawa, Hiromichi
Author_Institution :
Central Res. Lab., Hitachi Ltd., Tokyo, Japan
fYear :
2002
fDate :
2002
Firstpage :
320
Lastpage :
325
Abstract :
This paper presents the latest results of handwritten digit recognition on well-known image databases using the state-of-the-art feature extraction and classification techniques. The tested databases are CENPARMI, CEDAR, and MNIST. On the test dataset of each database, 56 recognition accuracies are given by combining 7 classifiers with 8 feature vectors. All the classifiers and feature vectors give high accuracies. Among the features, the chain-code feature and gradient feature show advantages, and the profile structure feature shows efficiency as a complementary feature. In comparison of classifiers, the support vector classifier with RBF kernel gives the highest accuracy but is extremely expensive in storage and computation. Among the non-SV classifiers, the polynomial classifier performs best, followed by a learning quadratic discriminant function classifier. The results are competitive compared to previous ones and they provide a baseline for evaluation of future works.
Keywords :
feature extraction; handwritten character recognition; learning (artificial intelligence); pattern classification; radial basis function networks; visual databases; CEDAR; CENPARMI; MNIST; chain code feature; complementary feature; feature extraction; gradient feature; handwritten digit recognition; image databases; learning quadratic discriminant function; pattern classification; polynomial classifier; support vector classifier; Chromium; Computed tomography; Conferences; Handwriting recognition;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Frontiers in Handwriting Recognition, 2002. Proceedings. Eighth International Workshop on
Print_ISBN :
0-7695-1692-0
Type :
conf
DOI :
10.1109/IWFHR.2002.1030930
Filename :
1030930
Link To Document :
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