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Classical Machine Learning Versus Deep Learning for the Older Adults Free-Living Activity Classification

Muhammad Awais, Lorenzo Chiari, Espen A. F. Ihlen, Jorunn L. Helbostad, Luca Palmerini

2021Sensors31 citationsDOIOpen Access PDF

Abstract

Physical activity has a strong influence on mental and physical health and is essential in healthy ageing and wellbeing for the ever-growing elderly population. Wearable sensors can provide a reliable and economical measure of activities of daily living (ADLs) by capturing movements through, e.g., accelerometers and gyroscopes. This study explores the potential of using classical machine learning and deep learning approaches to classify the most common ADLs: walking, sitting, standing, and lying. We validate the results on the ADAPT dataset, the most detailed dataset to date of inertial sensor data, synchronised with high frame-rate video labelled data recorded in a free-living environment from older adults living independently. The findings suggest that both approaches can accurately classify ADLs, showing high potential in profiling ADL patterns of the elderly population in free-living conditions. In particular, both long short-term memory (LSTM) networks and Support Vector Machines combined with ReliefF feature selection performed equally well, achieving around 97% F-score in profiling ADLs.

Topics & Concepts

Activities of daily livingAccelerometerWearable computerArtificial intelligenceSittingMachine learningProfiling (computer programming)Activity recognitionComputer scienceDeep learningSupport vector machineAssisted Living FacilityPopulationIndependent livingPhysical medicine and rehabilitationAssisted livingGerontologyMedicinePhysical therapyOperating systemPathologyEmbedded systemEnvironmental healthContext-Aware Activity Recognition SystemsNon-Invasive Vital Sign MonitoringPhysical Activity and Health