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

Sensors (Basel). 2020 Jan 21;20(3):588. doi: 10.3390/s20030588.

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.

Keywords: GIS; GPS; physical activity type; real-life.

MeSH terms

  • Accelerometry / methods*
  • Adult
  • Algorithms
  • Exercise / physiology*
  • Female
  • Geographic Information Systems*
  • Humans
  • Male
  • Young Adult