Litcius/Paper detail

Using Accelerometer and GPS Data for Real-Life Physical Activity Type Detection

Hoda Allahbakhshi, Lindsey Conrow, Babak Naimi, Robert Weibel

2020Sensors41 citationsDOIOpen Access PDF

Abstract

This paper aims to examine the role of global positioning system (GPS) sensor data in real-life physical activity (PA) type detection. Thirty-three young participants wore devices including GPS and accelerometer sensors on five body positions and performed daily PAs in two protocols, namely semi-structured and real-life. One general random forest (RF) model integrating data from all sensors and five individual RF models using data from each sensor position were trained using semi-structured (Scenario 1) and combined (semi-structured + real-life) data (Scenario 2). The results showed that in general, adding GPS features (speed and elevation difference) to accelerometer data improves classification performance particularly for detecting non-level and level walking. Assessing the transferability of the models on real-life data showed that models from Scenario 2 are strongly transferable, particularly when adding GPS data to the training data. Comparing individual models indicated that knee-models provide comparable classification performance (above 80%) to general models in both scenarios. In conclusion, adding GPS data improves real-life PA type classification performance if combined data are used for training the model. Moreover, the knee-model provides the minimal device configuration with reliable accuracy for detecting real-life PA types.

Topics & Concepts

Global Positioning SystemAccelerometerComputer scienceData typeTransferabilityRandom forestReal-time computingSimulationArtificial intelligenceMachine learningTelecommunicationsLogitProgramming languageOperating systemContext-Aware Activity Recognition SystemsHuman Mobility and Location-Based AnalysisPhysical Activity and Health