Publication | Closed Access
Activity recognition from acceleration data using AR model representation and SVM
161
Citations
10
References
2008
Year
Unknown Venue
Physical ActivityEngineeringMachine LearningAction Recognition (Movement Science)Acceleration DataBiometricsAccelerometerAction Recognition (Computer Vision)Wearable TechnologyHuman MonitoringImage AnalysisKinesiologyData ScienceMotion CapturePattern RecognitionAccelerometer DataAr Model RepresentationHuman MotionHealth SciencesAssistive TechnologyTemporal Pattern RecognitionComputer ScienceComputer VisionAccelerometer DateHealth MonitoringHuman MovementActivity RecognitionAr CoefficientsMotion Analysis
In this paper, the autoregressive (AR) model of time-series is presented to recognize human activity from a tri-axial accelerometer data. Four orders of autoregressive model for accelerometer data is built and the AR coefficients are extracted as features for activity recognition. Classification of the human activities is performed with support vector machine (SVM). The average recognition results for four activities (running, still, jumping and walking) using the proposed AR-based features are 92.25%, which are better than using traditional frequently used time domains features (mean, standard deviation, energy and correlation of acceleration data) and FFT features. The results show that AR coefficients obvious discriminate different human activities and it can be extract as an effective feature for the recognition of accelerometer date.
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