Title :
Can scanning n-tuple classifiers be improved by pre-transforming training data?
Author_Institution :
Dept. of Electron. Syst. Eng., Essex Univ., Colchester, UK
Abstract :
A new method of applying n-tuple recognition techniques to handwritten OCR has recently been reported, which involves scanning an n-tuple classifier over a chain-code of the image. In scanning n-tuple systems, the traditional advantages of n-tuple recognition i.e. training and recognition speed are retained, while offering superior recognition accuracy, as demonstrated by results on three widely used data sets. Furthermore, the scanning n-tuple systems are less liable to saturation than conventional n-tuple classifiers. One effect of this is that even for large datasets, the training set accuracy remains extremely close to 100%. This paper explores the idea of expanding the training set artificially by pre-transforming the images in various ways, the aim being to improve recognition accuracy on unseen data
Keywords :
image classification; optical character recognition; chain-code; handwritten OCR; large datasets; n-tuple recognition techniques; recognition accuracy; scanning n-tuple classifiers; training data pretransformation;
Conference_Titel :
Handwriting Analysis and Recognition - A European Perspective, IEE Workshop on
Conference_Location :
London
DOI :
10.1049/ic:19960924