Hand gesture recognition is an important topic in natural user interfaces (NUI). Hand features extraction is the first step for hand gesture recognition. This work proposes a novel real time method for hand features recognition. In our framework we use three cameras and the hand region is extracted with the background subtraction method. Features like arm angle and fingers positions are calculated using Y variations in the vertical contour image. Wrist detection is obtained by calculating the bigger distance from a base line and the hand contour, giving the main features for the hand gesture recognition. Experiments on our own data-set of about 1800 images show that our method performs well and is highly efficient.
CITATION STYLE
Cruz Bautista, A. G., González-Barbosa, J. J., Hurtado-Ramos, J. B., Ornelas-Rodriguez, F. J., & González-Barbosa, E. A. (2020). Hand features extractor using hand contour–a case study. Automatika, 61(1), 99–108. https://doi.org/10.1080/00051144.2019.1686568
Mendeley helps you to discover research relevant for your work.