A new Framework for Elderly Fall Detection Using Coupled Hidden Markov Models

A new Framework for Elderly Fall Detection

Using Coupled Hidden Markov Models

Mabrouka Hagui1, Mohamed Mahjoub1, and Faycel ElAyeb2

1National Engineering School of Sousse, University of Sousse, Laboratory of Advanced Technology and Intelligent Systems, Tunisia

2Preparatory Institute for Engineering Studies, University of Monastir, Tunisia

Abstract: Falls are a most common problem for old people. They can result in dangerous consequences even death. Many recent works have presented different approaches to detect fall and prevent dangerous outcomes. In this paper, human fall detection from video streams based on a Coupled Hidden Markov Model (CHMM) has been proposed. The CHMM was used to model the motion and static spatial characteristic of human silhouette. The validity of current proposed method was demonstrated with experiments on Le2i database, Weizman database and video from Youtube simulating falls and normal activities. Experimental results showed the superiority of the CHMM for video fall detection.

Keywords: Fall detection; feature extraction; shape deformation, motion history of image, coupled hidden markov models.

Received June 17, 2016; accepted July 28, 2016

Full Text 

Read 3004 times Last modified on Sunday, 23 June 2019 07:43
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…