Title of article :
Hand vein recognition with rotation feature matching based on fuzzy algorithm
Author/Authors :
Hasan, Haitham S Business Information Technology Department - Business Informatics College - University of Information Technology and Communications - Baghdad, Iraq , Al-Sharqi, Mais A Bioinformatics Department - BioMedical Informatics College - University of Information Technology and Communications - Baghdad, Iraq
Abstract :
The Bodily motion or emotion, which can be obtained for example from a hand or a face, originates
gestures. Every individual has a unique pattern of dorsal hand veins. The vein pattern’s orientation
changes when one rotates their hand in a particular direction. This study focused on hand-gesture
recognition using dorsal hand veins. The aim of this work is a novel technique to track and recognizing
hand vein rotation using fuzzy neural network, and the change in orientation was considered as a
gesture and measured. The algorithms were tested over various rotations ranging from −45◦ to +45◦.
We successfully detected various rotations in both clockwise and anti-clockwise directions, achieving
93% accuracy and a reasonable time execution. This problem can be solved because a person can
steer a car wheel merely by rotating his/her hand. An infrared camera captured the rotation of hand
veins, so car wheel steering was unnecessary.
Keywords :
Complex Walsh transform , Dorsal hand vein pattern , Feature extraction , Fuzzy neural network , Sectorization
Journal title :
International Journal of Nonlinear Analysis and Applications