DocumentCode
3669701
Title
Fall detection using ceiling-mounted 3D depth camera
Author
Michal Kepski;Bogdan Kwolek
Author_Institution
University of Rzeszow, 16c Rejtana Av., 35-959 Rzeszó
Volume
2
fYear
2014
Firstpage
640
Lastpage
647
Abstract
This paper proposes an algorithm for fall detection using a ceiling-mounted 3D depth camera. The lying pose is separated from common daily activities by a k-NN classifier, which was trained on features expressing head-floor distance, person area and shape´s major length to width. In order to distinguish between intentional lying postures and accidental falls the algorithm also employs motion between static postures. The experimental validation of the algorithm was conducted on realistic depth image sequences of daily activities and simulated falls. It was evaluated on more than 45000 depth images and gave 0% error. To reduce the processing overload an accelerometer was used to indicate the potential impact of the person and to start an analysis of depth images.
Keywords
"Cameras","Sensors","Accelerometers","Feature extraction","Monitoring","Three-dimensional displays","Image sequences"
Publisher
ieee
Conference_Titel
Computer Vision Theory and Applications (VISAPP), 2014 International Conference on
Type
conf
Filename
7294990
Link To Document