Publication | Open Access
Using LS-SVM Based Motion Recognition for Smartphone Indoor Wireless Positioning
133
Citations
39
References
2012
Year
Location TrackingEngineeringSmartphone Indoor WirelessMotion RecognitionWearable TechnologyLocalizationKinesiologyPattern RecognitionLocation AwarenessKinematicsHealth SciencesMobile ComputingMobile Positioning DataMobile UserMobile SensingPhysical Motion RecognitionHuman MovementIndoor Positioning SystemActivity Recognition
The paper presents an indoor navigation solution by combining physical motion recognition with wireless positioning. Twenty-seven simple features are extracted from the built-in accelerometers and magnetometers in a smartphone. Eight common motion states used during indoor navigation are detected by a Least Square-Support Vector Machines (LS-SVM) classification algorithm, e.g., static, standing with hand swinging, normal walking while holding the phone in hand, normal walking with hand swinging, fast walking, U-turning, going up stairs, and going down stairs. The results indicate that the motion states are recognized with an accuracy of up to 95.53% for the test cases employed in this study. A motion recognition assisted wireless positioning approach is applied to determine the position of a mobile user. Field tests show a 1.22 m mean error in "Static Tests" and a 3.53 m in "Stop-Go Tests".
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