Hardware Based High Efficient Recognition of 3D Hand Gestures
Abstract
This paper addresses the technical issues related to hand gestures generation and their real-time\r recognition. The arbitrary 3D gestures are generated by the Leap-motion Controller which detects\r and tracks the hands and fingers to acquire position and motion information. We combine Leap-motion\r sensor and hardware based pattern engine to make gesture recognition easier and propose an efficient\r recognition solution involving a neuron chip (named CM1K). In our experiment, we used one-finger\r gesture cases to demonstrate the efficiency of our solution. Experimental results showed that our solution\r owns a high accuracy in gesture data acquiring and only costs a few milliseconds in recognizing speed.\r We also considered the situation of similar gestures recognition and analyzed the causes of low matching\r rate from specific data.About this article
How to Cite
Hardware Based High Efficient Recognition of 3D Hand Gestures. (2015). Journal of Fiber Bioengineering and Informatics, 8(2), 337-345. https://doi.org/10.3993/jfbim00106