Title
Vibrotactile rendering of head gestures for controlling electric wheelchair
Abstract
We have developed a head gesture controlled electric wheelchair system to aid persons with severe disabilities. Real-time range information obtained from a stereo camera is used to locate and segment the face images of the user from the sensed video. We use an Isomap based nonlinear manifold learning map of facial textures for head pose estimation. Our system is a non-contact vision system, making it much more convenient to use. The user is only required to gesture his/her head to command the wheelchair. To overcome problems with a non responding system, it is necessary to notify the user of the exact system state while the system is in use. In this paper, we explore the use of vibrotactile rendering of head gestures as feedback. Three different feedback systems are developed and tested, audio stimuli, vibrotactile stimuli and audio plus vibrotactile stimuli. We have performed user tests to study the usability of these three display methods. The usability studies show that the method using both audio plus vibrotactile response outperforms the other methods (i.e. audio stimuli, vibrotactile stimuli response).
Year
DOI
Venue
2009
10.1109/ICSMC.2009.5346213
SMC
Keywords
Field
DocType
electric wheelchair system,vibrotactile rendering,vibrotactile stimuli response,non-contact vision system,vibrotactile stimulus,different feedback system,exact system state,audio stimulus,head gesture,vibrotactile response,vibrations,navigation,feedback,usability,face recognition,stereo camera,pose estimation,multidimensional scaling,manifold learning,feedback system,image segmentation,gesture recognition,face,signal processing,data mining,vision system
Wheelchair,Stereo camera,Computer vision,Machine vision,Gesture,Computer science,Usability,Gesture recognition,Pose,Artificial intelligence,Rendering (computer graphics)
Conference
ISSN
Citations 
PageRank 
1062-922X
5
0.57
References 
Authors
1
4
Name
Order
Citations
PageRank
Shafiq Ur Réhman128429.26
Bisser Raytchev221233.11
Ikushi Yoda315617.16
Li Liu4443.77