Applying Multivariate Segmentation Methods to Human Activity Recognition From Wearable Sensors' Data.
Kenan LiRima HabreHuiyu DengRobert UrmanJohn L MorrisonFrank D GillilandJosé Luis AmbiteDimitris StripelisYao-Yi ChiangYijun LinAlex A T BuiChristine E KingAnahita HosseiniEleanne Van VlietMajid SarrafzadehSandrah P EckelPublished in: JMIR mHealth and uHealth (2019)
In a scenario with variable duration activity bouts, GGS multivariate segmentation produced smart-sized windows with more stable predictions and a higher accuracy rate than traditional fixed-size sliding window approaches. Overall, accuracy was good in both datasets but, as expected, it was slightly lower in the more real-world study using wrist-worn smartwatches in children (BREATHE) than in the more tightly controlled study using waist-worn smartphones in adults (HARuS). We implemented GGS in an offline setting, but it could be adapted for real-time prediction with streaming data.