Title
Video Based Fall Detection with Enhanced Motion History Images.
Abstract
Computer vision systems offer a new promising solution which can help older people stay at home by providing a secure environment and improve their quality of life. One application area of video surveillance is to analyse human behaviour and detect unusual behaviour. Falls are one of the greatest risks for the elderly living at home. This paper presents a novel approach for detecting falls, based on a combination of motion information and human shape variation. The motion information of a segmented silhouette, when extracted can provide a useful cue for classifying different behaviours. Also, the variation in human shape can used to establish the pose and hence fall events. The approach presented here extracts motion information, use variation in shape and in addition use best-fit approximated ellipse around the human body to further improved the accuracy of falls detection. Result of our approach demonstrates a 20% improvement over motion information only implementations.
Year
DOI
Venue
2016
10.1145/2910674.2935832
PETRA
Field
DocType
Citations 
Computer vision,Silhouette,Computer science,Simulation,Implementation,Artificial intelligence,Ellipse,Motion History Images,Human body
Conference
1
PageRank 
References 
Authors
0.35
9
4
Name
Order
Citations
PageRank
Suad Albawendi110.35
Kofi Appiah216318.09
Heather M. Powell3102.25
Ahmad Lotfi48820.21