Publication | Closed Access
Fall detection using RF sensor networks
62
Citations
18
References
2013
Year
Unknown Venue
EngineeringHuman Pose EstimationWireless Sensor System3D Pose EstimationWearable TechnologyHuman MonitoringSensor NetworksKinesiologyImage AnalysisData SciencePattern RecognitionHidden Markov ModelRf Sensor NetworksHealth SciencesFall PreventionMachine VisionAssistive TechnologyComputer ScienceSignal ProcessingComputer VisionFall Detection SystemsHuman MovementActivity RecognitionRadio Tomographic Imaging
The number of people aged 65 and over continues to rapidly increase, leading to a greater need for technologies to assist in caring for an aging population. Among these technologies are fall detection systems, since falling is a major concern for the elderly. In this paper we present a method of detecting falls using radio tomographic imaging. A two-level array of RF sensor nodes is deployed around the perimeter of a room, and the shadowing losses in the signals relayed between sensors is used to detect a person's horizontal and vertical position. Training data is used to provide a relationship between the attenutation measured as a function of height and a person's pose, which is then used in a hidden Markov model. During system operation, a forward algorithm estimates the most likely current state at each time. If the time between a standing pose and a lying down pose is too short, the system detects a fall. Using a collected experimental test set, we show that the system can distinguish falls from controlled lying down actions (e.g., sitting on the floor) with 100% reliability and no false alarms.
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