| Literature DB >> 35632022 |
Stefan Kalabakov1,2,3, Simon Stankoski1,2, Ivana Kiprijanovska1,2, Andrejaana Andova1,2, Nina Reščič1,2, Vito Janko1, Martin Gjoreski4, Matjaž Gams1,2, Mitja Luštrek1,2.
Abstract
From 2018 to 2021, the Sussex-Huawei Locomotion-Transportation Recognition Challenge presented different scenarios in which participants were tasked with recognizing eight different modes of locomotion and transportation using sensor data from smartphones. In 2019, the main challenge was using sensor data from one location to recognize activities with sensors in another location, while in the following year, the main challenge was using the sensor data of one person to recognize the activities of other persons. We use these two challenge scenarios as a framework in which to analyze the effectiveness of different components of a machine-learning pipeline for activity recognition. We show that: (i) selecting an appropriate (location-specific) portion of the available data for training can improve the F1 score by up to 10 percentage points (p. p.) compared to a more naive approach, (ii) separate models for human locomotion and for transportation in vehicles can yield an increase of roughly 1 p. p., (iii) using semi-supervised learning can, again, yield an increase of roughly 1 p. p., and (iv) temporal smoothing of predictions with Hidden Markov models, when applicable, can bring an improvement of almost 10 p. p. Our experiments also indicate that the usefulness of advanced feature selection techniques and clustering to create person-specific models is inconclusive and should be explored separately in each use-case.Entities:
Keywords: Hidden Markov models; activity recognition; competition; machine learning; semi-supervised learning; smartphone
Mesh:
Year: 2022 PMID: 35632022 PMCID: PMC9145859 DOI: 10.3390/s22103613
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847