On time series sensor data segmentation for fall and activity classification

Ifeyinwa Achumba, Sebastian Bersch, Rinat Khusainov, Djamel Azzi

    Research output: Contribution to conferencePaperpeer-review

    Abstract

    The vast amount of literature on human ambulation and Activities of Daily Living (ADL) events classification has highlighted significant details on most aspects of the research area including: monitoring techniques, Wearable Sensor-based Monitoring Device (WSMD) placement on human body parts, and ambulation and ADL data collection methods, among others. However literature has failed to highlight meaningful details on one of the most important aspects of such studies, sensor data segmentation for feature extraction. The choice of segmentation techniques is in general very important, because inappropriate segmentation will most likely result in features without discriminant power. No classifier of whatever sophistication will give meaningful results with features that have no discriminant power. The optimal segmentation technique has been empirically investigated using sensor data from a bi-axial accelerometer. Results of the empirical investigation are presented.
    Original languageEnglish
    Publication statusPublished - 2012
    EventIEEE 14th International Conference on e-Health Networking, Applications and Services (Healthcom), 2012 - Beijing, China
    Duration: 10 Oct 201213 Oct 2012

    Conference

    ConferenceIEEE 14th International Conference on e-Health Networking, Applications and Services (Healthcom), 2012
    Country/TerritoryChina
    CityBeijing
    Period10/10/1213/10/12

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