Applying machine learning for sensor data analysis in interactive systems: Common pitfalls of pragmatic use and ways to avoid them

T PlÖtz - ACM Computing Surveys (CSUR), 2021 - dl.acm.org
With the widespread proliferation of (miniaturized) sensing facilities and the massive growth
and popularity of the field of machine learning (ML) research, new frontiers in automated …

[HTML][HTML] Opportunities for smartphone sensing in e-health research: a narrative review

P Kulkarni, R Kirkham, R McNaney - Sensors, 2022 - mdpi.com
Recent years have seen significant advances in the sensing capabilities of smartphones,
enabling them to collect rich contextual information such as location, device usage, and …

[HTML][HTML] Large scale population assessment of physical activity using wrist worn accelerometers: the UK biobank study

A Doherty, D Jackson, N Hammerla, T Plötz, P Olivier… - PloS one, 2017 - journals.plos.org
Background Physical activity has not been objectively measured in prospective cohorts with
sufficiently large numbers to reliably detect associations with multiple health outcomes …

[HTML][HTML] Deep recurrent neural networks for human activity recognition

A Murad, JY Pyun - Sensors, 2017 - mdpi.com
Adopting deep learning methods for human activity recognition has been effective in
extracting discriminative features from raw input sequences acquired from body-worn …

Deepsense: A unified deep learning framework for time-series mobile sensing data processing

S Yao, S Hu, Y Zhao, A Zhang… - Proceedings of the 26th …, 2017 - dl.acm.org
Mobile sensing and computing applications usually require time-series inputs from sensors,
such as accelerometers, gyroscopes, and magnetometers. Some applications, such as …

Ensembles of deep lstm learners for activity recognition using wearables

Y Guan, T Plötz - Proceedings of the ACM on interactive, mobile …, 2017 - dl.acm.org
Recently, deep learning (DL) methods have been introduced very successfully into human
activity recognition (HAR) scenarios in ubiquitous and wearable computing. Especially the …

Collossl: Collaborative self-supervised learning for human activity recognition

Y Jain, CI Tang, C Min, F Kawsar… - Proceedings of the ACM on …, 2022 - dl.acm.org
A major bottleneck in training robust Human-Activity Recognition models (HAR) is the need
for large-scale labeled sensor datasets. Because labeling large amounts of sensor data is …

Smart devices are different: Assessing and mitigatingmobile sensing heterogeneities for activity recognition

A Stisen, H Blunck, S Bhattacharya… - Proceedings of the 13th …, 2015 - dl.acm.org
The widespread presence of motion sensors on users' personal mobile devices has
spawned a growing research interest in human activity recognition (HAR). However, when …

Imaging and fusing time series for wearable sensor-based human activity recognition

Z Qin, Y Zhang, S Meng, Z Qin, KKR Choo - Information Fusion, 2020 - Elsevier
To facilitate data-driven and informed decision making, a novel deep neural network
architecture for human activity recognition based on multiple sensor data is proposed in this …

Assessing the state of self-supervised human activity recognition using wearables

H Haresamudram, I Essa, T Plötz - … of the ACM on Interactive, Mobile …, 2022 - dl.acm.org
The emergence of self-supervised learning in the field of wearables-based human activity
recognition (HAR) has opened up opportunities to tackle the most pressing challenges in the …