An architectural based framework for the distributed collection, analysis and query from inhomogeneous time series data sets and wearables for biofeedback applications

James Lee, David Rowlands, Nicholas Jackson, Raymond Leadbetter, Tomohito Wada, Daniel A. James

    Research output: Contribution to journalArticleResearchpeer-review

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    Abstract

    The increasing professionalism of sports persons and desire of consumers to imitate this has led to an increased metrification of sport. This has been driven in no small part by the widespread availability of comparatively cheap assessment technologies and, more recently, wearable technologies. Historically, whilst these have produced large data sets, often only the most rudimentary analysis has taken place (Wisbey et al in: "Quantifying movement demands of AFL football using GPS tracking"). This paucity of analysis is due in no small part to the challenges of analysing large sets of data that are often from disparate data sources to glean useful key performance indicators, which has been a largely a labour intensive process. This paper presents a framework that can be cloud based for the gathering, storing and algorithmic interpretation of large and inhomogeneous time series data sets. The framework is architecture based and technology agnostic in the data sources it can gather, and presents a model for multi set analysis for inter- and intra- devices and individual subject matter. A sample implementation demonstrates the utility of the framework for sports performance data collected from distributed inertial sensors in the sport of swimming.

    Original languageEnglish
    Article number23
    Pages (from-to)1-14
    Number of pages14
    JournalAlgorithms
    Volume10
    Issue number1
    DOIs
    Publication statusPublished - 1 Mar 2017

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    Biofeedback
    Time Series Data
    Sports
    Time series
    Query
    Inertial Sensors
    Distributed Sensor
    Performance Indicators
    Multiset
    Large Data Sets
    Large Set
    Global positioning system
    Person
    Availability
    Personnel
    Framework
    Architecture
    Sensors
    Demonstrate

    Cite this

    Lee, James ; Rowlands, David ; Jackson, Nicholas ; Leadbetter, Raymond ; Wada, Tomohito ; James, Daniel A. / An architectural based framework for the distributed collection, analysis and query from inhomogeneous time series data sets and wearables for biofeedback applications. In: Algorithms. 2017 ; Vol. 10, No. 1. pp. 1-14.
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    An architectural based framework for the distributed collection, analysis and query from inhomogeneous time series data sets and wearables for biofeedback applications. / Lee, James; Rowlands, David; Jackson, Nicholas; Leadbetter, Raymond; Wada, Tomohito; James, Daniel A.

    In: Algorithms, Vol. 10, No. 1, 23, 01.03.2017, p. 1-14.

    Research output: Contribution to journalArticleResearchpeer-review

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