Human Activity Recognition from Smartphone Sensor Data for Clinical Trials
Stefania Russo, Rafa{\l} Klimas, Marta P{\l}onka, Hugo Le Gall, Sven Holm, Dimitar Stanev, Florian Lipsmeier, Mattia Zanon, Lito Kriara

TL;DR
This paper presents a ResNet-based human activity recognition model that accurately detects gait and everyday activities from smartphone sensor data, demonstrating high robustness across different wear locations and applicability in clinical trials.
Contribution
The study introduces a novel ResNet-based HAR model with minimal overhead that outperforms existing models in accuracy and robustness across multiple smartphone wear locations.
Findings
Achieved 98.4% and 99.6% accuracy in gait detection in two datasets.
Higher accuracy in everyday activity recognition compared to state-of-the-art.
Maintained high performance across 9 different smartphone wear locations.
Abstract
We developed a ResNet-based human activity recognition (HAR) model with minimal overhead to detect gait versus non-gait activities and everyday activities (walking, running, stairs, standing, sitting, lying, sit-to-stand transitions). The model was trained and evaluated using smartphone sensor data from adult healthy controls (HC) and people with multiple sclerosis (PwMS) with Expanded Disability Status Scale (EDSS) scores between 0.0-6.5. Datasets included the GaitLab study (ISRCTN15993728), an internal Roche dataset, and publicly available data sources (training only). Data from 34 HC and 68 PwMS (mean [SD] EDSS: 4.7 [1.5]) were included in the evaluation. The HAR model showed 98.4% and 99.6% accuracy in detecting gait versus non-gait activities in the GaitLab and Roche datasets, respectively, similar to a comparative state-of-the-art ResNet model (99.3% and 99.4%). For everyday…
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