A Comprehensive Survey on Deep Learning Methods in Human Activity Recognition
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Published:2024-04-18
Issue:2
Volume:6
Page:842-876
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ISSN:2504-4990
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Container-title:Machine Learning and Knowledge Extraction
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language:en
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Short-container-title:MAKE
Author:
Kaseris Michail12ORCID, Kostavelis Ioannis12ORCID, Malassiotis Sotiris2ORCID
Affiliation:
1. Department of Supply Chain Management, International Hellenic University, Kanellopoulou 2, 60132 Katerini, Greece 2. Information Technologies Institute (ITI) Center of Research and Technology Hellas (CERTH), 57001 Thessaloniki, Greece
Abstract
Human activity recognition (HAR) remains an essential field of research with increasing real-world applications ranging from healthcare to industrial environments. As the volume of publications in this domain continues to grow, staying abreast of the most pertinent and innovative methodologies can be challenging. This survey provides a comprehensive overview of the state-of-the-art methods employed in HAR, embracing both classical machine learning techniques and their recent advancements. We investigate a plethora of approaches that leverage diverse input modalities including, but not limited to, accelerometer data, video sequences, and audio signals. Recognizing the challenge of navigating the vast and ever-growing HAR literature, we introduce a novel methodology that employs large language models to efficiently filter and pinpoint relevant academic papers. This not only reduces manual effort but also ensures the inclusion of the most influential works. We also provide a taxonomy of the examined literature to enable scholars to have rapid and organized access when studying HAR approaches. Through this survey, we aim to inform researchers and practitioners with a holistic understanding of the current HAR landscape, its evolution, and the promising avenues for future exploration.
Funder
European Union’s Horizon Europe Project “Sestosenso”
Reference146 articles.
1. Deep learning based human activity recognition (HAR) using wearable sensor data;Gupta;Int. J. Inf. Manag. Data Insights,2021 2. Diraco, G., Rescio, G., Caroppo, A., Manni, A., and Leone, A. (2023). Human Action Recognition in Smart Living Services and Applications: Context Awareness, Data Availability, Personalization, and Privacy. Sensors, 23. 3. Shuvo, M.M.H., Ahmed, N., Nouduri, K., and Palaniappan, K. (2020, January 13–15). A Hybrid Approach for Human Activity Recognition with Support Vector Machine and 1D Convolutional Neural Network. Proceedings of the 2020 IEEE Applied Imagery Pattern Recognition Workshop (AIPR), Washington, DC, USA. 4. Rojanavasu, P., Jantawong, P., Jitpattanakul, A., and Mekruksavanich, S. (2023, January 22–25). Improving Inertial Sensor-based Human Activity Recognition using Ensemble Deep Learning. Proceedings of the 2023 Joint International Conference on Digital Arts, Media and Technology with ECTI Northern Section Conference on Electrical, Electronics, Computer and Telecommunications Engineering (ECTI DAMT & NCON), Phuket, Thailand. 5. Muhoza, A.C., Bergeret, E., Brdys, C., and Gary, F. (2023, January 20–23). Multi-Position Human Activity Recognition using a Multi-Modal Deep Convolutional Neural Network. Proceedings of the 2023 8th International Conference on Smart and Sustainable Technologies (SpliTech), Split, Croatia.
Cited by
3 articles.
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