Publication | Closed Access
Passive in-home measurement of stride-to-stride gait variability comparing vision and Kinect sensing
158
Citations
12
References
2011
Year
Unknown Venue
Gait AnalysisEngineeringHuman Pose EstimationMeasurement3D Pose EstimationWearable TechnologyMovement AnalysisKinesiologyKinect SensingBiostatisticsKinematicsHealth SciencesFall PreventionStride-to-stride Gait VariabilityMachine VisionPassive In-home MeasurementRehabilitationComputer VisionEye TrackingVideo DataPathological GaitHuman MovementOlder Adults Fall
We present an analysis of measuring stride-to-stride gait variability passively, in a home setting using two vision based monitoring techniques: anonymized video data from a system of two web-cameras, and depth imagery from a single Microsoft Kinect. Millions of older adults fall every year. The ability to assess the fall risk of elderly individuals is essential to allowing them to continue living safely in independent settings as they age. Studies have shown that measures of stride-to-stride gait variability are predictive of falls in older adults. For this analysis, a set of participants were asked to perform a number of short walks while being monitored by the two vision based systems, along with a marker based Vicon motion capture system for ground truth. Measures of stride-to-stride gait variability were computed using each of the systems and compared against those obtained from the Vicon.
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