Multi-modal Fall Detection Within the WeCare Framework

Abstract

Falls are identified as a major health risk for the elderly and a major obstacle to independent living. Considering the remarkable increase in the elderly population of developed countries, methods for fall detection have been a recent active area of research. However, existing methods often use only wearable sensors, such as acceloremeters, or cameras to detect falls. In this demonstration, in contrast to the state of the art solutions, we focus on the use of multi-modal wire- less sensor networks within the WeCare framework. WeCare system is developed as a solution for independent living ap- plications by remotely monitoring the health and well-being of its users. We describe the general structure of WeCare and demonstrate its fall detection method. Our set-up not only includes scalar sensors to detect falls and motion but also consists of embedded cameras and RFID tags and uses sensor fusion techniques to improve the success of fall detection and minimize the false positives.

Publication
In 9th ACM/IEEE International Conference on Information Processing in Sensor Networks (IPSN 2010)
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Hande Alemdar
Assistant Professor at CENG

My research interests include machine learning, data science, and big data analytics.

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