Falls pose a significant health risk, particularly for older people and those with specific medical conditions. Therefore, timely fall detection is crucial for preventing fall-related complications. Existing fall detection methods often have high false alarm or false negative rates, and many rely on handcrafted features. Additionally, most approaches are evaluated using simulated falls, leading to performance degradation in real-world scenarios. This paper explores a new fall detection approach leveraging real-world fall data and state-of-the-art time series techniques. The proposed method eliminates the need for manual feature engineering and has efficient runtime. Our approach achieves high accuracy, with false alarms and false negatives each as few as one in three days on FARSEEING, a large dataset of real-world falls (mean F 1 score: 90.7%). We also outperform existing methods on simulated falls datasets, FallAllD and SisFall. Furthermore, we investigate the performance of models trained on simulated data and tested on real-world data. This research presents a real-time fall detection framework with potential for real-world implementation.

Aderinola, T., Palmerini, L., D'Ascanio, I., Chiari, L., Klenk, J., Becker, C., et al. (2024). Accurate and Efficient Real-World Fall Detection Using Time Series Techniques. Cham : Springer [10.1007/978-3-031-77066-1_4].

Accurate and Efficient Real-World Fall Detection Using Time Series Techniques

Luca Palmerini
Secondo
;
Ilaria D'Ascanio;Lorenzo Chiari;
2024

Abstract

Falls pose a significant health risk, particularly for older people and those with specific medical conditions. Therefore, timely fall detection is crucial for preventing fall-related complications. Existing fall detection methods often have high false alarm or false negative rates, and many rely on handcrafted features. Additionally, most approaches are evaluated using simulated falls, leading to performance degradation in real-world scenarios. This paper explores a new fall detection approach leveraging real-world fall data and state-of-the-art time series techniques. The proposed method eliminates the need for manual feature engineering and has efficient runtime. Our approach achieves high accuracy, with false alarms and false negatives each as few as one in three days on FARSEEING, a large dataset of real-world falls (mean F 1 score: 90.7%). We also outperform existing methods on simulated falls datasets, FallAllD and SisFall. Furthermore, we investigate the performance of models trained on simulated data and tested on real-world data. This research presents a real-time fall detection framework with potential for real-world implementation.
2024
Advanced Analytics and Learning on Temporal Data
52
79
Aderinola, T., Palmerini, L., D'Ascanio, I., Chiari, L., Klenk, J., Becker, C., et al. (2024). Accurate and Efficient Real-World Fall Detection Using Time Series Techniques. Cham : Springer [10.1007/978-3-031-77066-1_4].
Aderinola, Timilehin; Palmerini, Luca; D'Ascanio, Ilaria; Chiari, Lorenzo; Klenk, Jochen; Becker, Clemens; Caulfield, Brian; Ifrim, Georgiana
File in questo prodotto:
Eventuali allegati, non sono esposti

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/1006584
 Attenzione

Attenzione! I dati visualizzati non sono stati sottoposti a validazione da parte dell'ateneo

Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus 0
  • ???jsp.display-item.citation.isi??? 0
social impact