Title :
Classifying Online Handwriting Characters under Cosine Representation
Abstract :
The natural way of handwriting to enter data into computer is still preferable in many tasks. However, handwriting character recognition is not a trivial task for computer. Based on the presentation of the input, handwriting recognition can be divided into two classes: offline and online. The main advantage of online handwritten data over offline data is the availability of stroke segmentation and order of writing. Utilizing this information rather than static image only can obtain higher recognition rate [11]. In this paper, we extend the method proposed in [13] to represent multiple strokes of a character together in a single set of features using cosine transformation. Using this representation, we have developed an online writer-independent character recognition system with MultiLayer Perceptron (MLP) classifiers, one classifier for each single character. We have tested our system on Section 1a (isolated digits) of the Unipen data set [7] and have obtained very competitive results.
Keywords :
Character recognition; Educational institutions; Handwriting recognition; Image recognition; Image segmentation; Information technology; Keyboards; Natural languages; Personal digital assistants; Writing; Online handwriting recognitionCosine representation;
Conference_Titel :
Advanced Language Processing and Web Information Technology, 2007. ALPIT 2007. Sixth International Conference on
Conference_Location :
Luoyang, Henan, China
Print_ISBN :
978-0-7695-2930-1
DOI :
10.1109/ALPIT.2007.72