Title of article :
Walking speed estimation using foot-mounted inertial sensors: Comparing machine learning and strap-down integration methods
Author/Authors :
Mannini، نويسنده , , Andrea and Sabatini، نويسنده , , Angelo Maria، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
10
From page :
1312
To page :
1321
Abstract :
In this paper we implemented machine learning (ML) and strap-down integration (SDI) methods and analyzed them for their capability of estimating stride-by-stride walking speed. Walking speed was computed by dividing estimated stride length by stride time using data from a foot mounted inertial measurement unit. In SDI methods stride-by-stride walking speed estimation was driven by detecting gait events using a hidden Markov model (HMM) based method (HMM-based SDI); alternatively, a threshold-based gait event detector was investigated (threshold-based SDI). In the ML method a linear regression model was developed for stride length estimation. Whereas the gait event detectors were a priori fixed without training, the regression model was validated with leave-one-subject-out cross-validation. A subject-specific regression model calibration was also implemented to personalize the ML method. y adults performed over-ground walking trials at natural, slower-than-natural and faster-than-natural speeds. The ML method achieved a root mean square estimation error of 2.0% and 4.2%, with and without personalization, against 2.0% and 3.1% by HMM-based SDI and threshold-based SDI. In spite that the results achieved by the two approaches were similar, the ML method, as compared with SDI methods, presented lower intra-subject variability and higher inter-subject variability, which was reduced by personalization.
Keywords :
Inertial sensing , Hidden Markov Models , Strap down integration , Walking speed estimation
Journal title :
Medical Engineering and Physics
Serial Year :
2014
Journal title :
Medical Engineering and Physics
Record number :
1732799
Link To Document :
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