A Wrist-Worn Piezoelectric Sensor Array for Gesture Input

Accurately estimating hand and finger poses for recognizing gestures helps solve many technical challenges, such as controlling prosthetics, robotic manipulation, and computer input, e.g. for virtual reality. A major challenge is accurately identifying gestures under different conditions—such as mob...

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Veröffentlicht in:Journal of medical and biological engineering 2018-04, Vol.38 (2), p.284-295
Hauptverfasser: Booth, Riley, Goldsmith, Peter
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description Accurately estimating hand and finger poses for recognizing gestures helps solve many technical challenges, such as controlling prosthetics, robotic manipulation, and computer input, e.g. for virtual reality. A major challenge is accurately identifying gestures under different conditions—such as mobile or low-light environments—without hindering hand function. This paper describes a low-cost wrist-mounted device that uses piezoelectric sensors to estimate finger gestures. The signals that are recorded are vibrations and shape changes that occur at the wrist due to muscle and tendon motion. An array of six piezoelectric sensors was affixed to the inside of an adjustable wrist strap. A user study was completed. To identify when a subject made a finger tap gesture, a touch graphics tablet recorded when a fingertip contacted the tablet surface. Piezoelectric signal features were computed over timing windows coinciding with a gesture. The features were used in the training of a support vector machine classification model. The results indicate the viability of using piezoelectric sensors to classify finger tap gestures, with a mean classification accuracy of 97% for tap gestures made with each of the five fingers.
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subjects Biomedical Engineering and Bioengineering
Cell Biology
Classification
Computer applications
Engineering
Finger
Fingers
Imaging
Motor task performance
Muscles
Original Article
Piezoelectricity
Prostheses
Prosthetics
Radiology
Sensor arrays
Sensors
Viability
Vibrations
Virtual reality
Wrist
title A Wrist-Worn Piezoelectric Sensor Array for Gesture Input
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