Litcius/Paper detail

Hand Gesture Recognition based on Near-infrared Sensing Wristband

Andualem Tadesse Maereg, Yang Lou, Emanuele Lindo Secco, R.W. King

202020 citationsDOIOpen Access PDF

Abstract

Wrist-worn gesture sensing systems can be used as a seamless interface for AR/VR interactions and control of various devices. In this paper, we present a low-cost gesture sensing system that utilizes near Infrared Emitters (600 - 1100 nm) and Photo-Receivers encompassing the wrist to infer hand gestures. The proposed system consists of a wristband comprising Infrared emitters and receivers, data acquisition hardware, data post-processing software, and gesture classification algorithms. During the data acquisition process, 24 near Infrared Emitters are sequentially switched on around the wrist, and twelve Photo-diodes measure the light reflected, refracted, and scattered by the tissues inside the wrist. The acquired data corresponding to different gestures are labeled and input into a machine learning algorithm for gesture classification. To demonstrated the accuracy and speed of the proposed system, real-time gesture sensing user studies were conducted. As a result of this comparison, we obtained an average accuracy of 98.06% with standard deviation of 1.82%. In addition, we evaluated that the system can perform six-eight gestures per second in real time using a desktop computer operating with Core i7-7800X CPU at 3.5GHz and 32 GB RAM.

Topics & Concepts

GestureComputer scienceGesture recognitionData acquisitionArtificial intelligenceComputer visionInterface (matter)SoftwareProcess (computing)Computer hardwareOperating systemMaximum bubble pressure methodBubbleHand Gesture Recognition SystemsTactile and Sensory InteractionsGaze Tracking and Assistive Technology