Title :
A static hand gesture recognition system using a composite neural network
Author :
Su, Mu-Chun ; Jean, Woung-Fei ; Chang, Hsiao-Te
Author_Institution :
Dept. of Electr. Eng., Tamkang Univ., Tamsui, Taiwan
Abstract :
A system for the recognition of static hand gestures is developed. Applications of hand gesture recognition range from teleoperated control to hand diagnostic and rehabilitation or to speaking aids for the deaf. We use two EMI-Gloves connected to an IBM compatible PC via hyperrectangular composite neural networks (HRCNNs) to implement a gesture recognition system. Using the supervised decision-directed learning (SDDL) algorithm, the HRCNNs can quickly learn the complex mapping of measurements of ten fingers´ flex angles to corresponding categories. In addition, the values of the synaptic weights of the trained HRCNNs were utilized to extract a set of crisp IF-THEN classification rules. In order to increase tolerance on variations of measurements corrupted by noise or some other factors we propose a special scheme to fuzzify these crisp rules. The system is evaluated for the classification of 51 static hand gestures from 4 “speakers”. The recognition accuracy for the testing set were 93.9%
Keywords :
data gloves; learning (artificial intelligence); multilayer perceptrons; pattern recognition equipment; EMI-Gloves; crisp rules; hyperrectangular composite neural networks; recognition accuracy; rehabilitation; speaking aids; static hand gesture recognition system; supervised decision-directed learning; teleoperated control; Auditory system; Deafness; Fingers; Handicapped aids; Neural networks; Noise measurement; Parameter estimation; Prototypes; Speech recognition; Speech synthesis;
Conference_Titel :
Fuzzy Systems, 1996., Proceedings of the Fifth IEEE International Conference on
Conference_Location :
New Orleans, LA
Print_ISBN :
0-7803-3645-3
DOI :
10.1109/FUZZY.1996.552280