DocumentCode
1705644
Title
Writer identification based on handwriting
Author
Said, H.E.S. ; Tan, T.N. ; Baker, K.D.
fYear
1998
Firstpage
42461
Lastpage
42466
Abstract
This paper describes a text-independent writer identification method. The difficulties with writer identification are discussed. These include the sensitivity of the identification algorithm to variations in the size of the training samples, in the words, line and character spacing, point sizes, and scanner resolutions. The work described demonstrates that texture analysis is a useful tool for writer identification based on handwriting. We use multichannel spatial filtering techniques to extract texture features from a nonuniformly skewed and nonskewed handwriting image. There are many available tilters in the multichannel technique. We use Gabor filters, since they have proven to be successful in extracting features for similar applications. We also use grey-scale co-occurrence matrices (GSCM) for feature extraction (for comparison purposes). Two classification techniques are adopted here, namely the weighted Euclidean distance (WED) and the k-NN classifiers. Our algorithm achieves a classification accuracy of 95.3% using 300 test images from 20 writers
fLanguage
English
Publisher
iet
Conference_Titel
Handwriting Analysis and Recognition (Ref. No. 1998/440), IEE Third European Workshop on
Conference_Location
Brussels
Type
conf
DOI
10.1049/ic:19980678
Filename
721339
Link To Document