Title :
Memory conscious sketched symbol recognition
Author :
Tirkaz, C. ; Yanikoglu, Benin ; Sezgin, Metin
Abstract :
Automatic sketch recognition is used to enhance human-computer interaction by allowing a natural/free form of interaction. It is a challenging problem due to the variability in hand drawings, the variation in the order of strokes, and the similarity of symbol classes. Since sketch recognition requires real time processing, the speed of the classifier is important. Another important issue is how to deal with very large data sets and/or large number of classes, as these also effect training and testing speed, making certain approaches infeasible. In order to deal with these issues, we present a memory conscious sketch recognition system that processes the data to retain only a few templates per class as prototypes; and furthermore, the query and prototypes are subsampled without loosing important information. The system also uses a cascaded combination of classifiers, to improve speed, as well as recognition accuracy. Results obtained using the public COAD and NicIcon databases are comparable to previous results obtained for these databases.
Keywords :
gesture recognition; handwritten character recognition; human computer interaction; image classification; natural language processing; neurophysiology; object recognition; automatic sketch recognition; classifier architecture; hand drawing variability; human-computer interaction; memory conscious sketched symbol recognition system; public COAD database; public NicIcon database; stroke order variation; symbol classes similarity; testing speed; training speed; Accuracy; Databases; Feature extraction; Memory management; Prototypes; Shape; Training;
Conference_Titel :
Pattern Recognition (ICPR), 2012 21st International Conference on
Conference_Location :
Tsukuba
Print_ISBN :
978-1-4673-2216-4