Publication | Closed Access
Multisensor data fusion for human activities classification and fall detection
72
Citations
6
References
2017
Year
Unknown Venue
EngineeringBiometricsAccelerometerWearable TechnologyMulti-sensor Information FusionIntelligent SystemsHuman MonitoringKinesiologyImage AnalysisData SciencePattern RecognitionMultimodal Sensor FusionSensor FusionMultisensor Data FusionHealth SciencesDecision FusionMachine VisionAssistive TechnologyData FusionComputer VisionRadarTri-axial AccelerometerFall DetectionHuman MovementActivity Recognition
Significant research exists on the use of wearable sensors in the context of assisted living for activities recognition and fall detection, whereas radar sensors have been studied only recently in this domain. This paper approaches the performance limitation of using individual sensors, especially for classification of similar activities, by implementing information fusion of features extracted from experimental data collected by different sensors, namely a tri-axial accelerometer, a micro-Doppler radar, and a depth camera. Preliminary results confirm that combining information from heterogeneous sensors improves the overall performance of the system. The classification accuracy attained by means of this fusion approach improves by 11.2% compared to radar-only use, and by 16.9% compared to the accelerometer. Furthermore, adding features extracted from a RGB-D Kinect sensor, the overall classification accuracy increases up to 91.3%.
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