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A Robust Automatic Gait Monitoring Approach Using A Single Imu for Home-Based Applications

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15 Scopus citations

Abstract

A new approach of human activity monitoring with a single Inertial Measurement Unit (IMU) capable of gait recognition and assessment is proposed for home-based applications. The method estimates the foot motion using a single IMU, then automatically segments the motion into steps, and extracts multiple kinematics templates. It classifies each segment by extracting Mahalanobis distance-based features from multiple sections of the motion templates and then training a Support Vector Machine. The proposed wearable system can distinguish between nine classes of activities with a classification accuracy of 99.6%. It can also discriminate between normal and abnormal gait patterns with an accuracy of 98.7%. In addition to a high recognition rate, the proposed approach provides a Gait Similarity Score (GSS) of the performed gait to its desired/normal pattern. The experimental results indicate the capability of GSS measure for assessing the quality of motion in "pre-", "initial", "mid" and "terminal" stages of swing phase.

Original languageEnglish
Article number1750077
JournalJournal of Mechanics in Medicine and Biology
Volume17
Issue number5
DOIs
StatePublished - Aug 1 2017

Keywords

  • Human activity recognition
  • gait analysis
  • motion segmentation

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