Autores
Torres Ruiz Miguel Jesús
Título Early Fall Prediction Using Hybrid Recurrent Neural Network and Long Short-Term Memory
Tipo Congreso
Sub-tipo Memoria
Descripción 5th International Conference on Intelligent Computing and Optimization, ICO 2022
Resumen Falls are unintentionally events that may occur in all age groups, particularly for elderly. Negative impacts include severe injuries and deaths. Although numerous machine learning models were proposed for fall detection, the formulations of the models are limited to prevent the occurrence of falls. Recently, the emerging research area namely early fall prediction receives an increasing attention. The major challenges of fall prediction are the long period of unseen future data and the nature of uncertainty in the time of occurrence of fall events. To extend the predictability (from 0.5 to 5 s) of the early fall prediction model, we propose a particle swarm optimization-based recurrent neural network and long short-term memory (RNN-LSTM). Results and analysis show that the algorithm yields accuracies of 89.8–98.2%, 88.4–97.1%, and 89.3–97.6% in three benchmark datasets UP Fall dataset, MOBIFALL dataset, and UR Fall dataset, respectively. © 2023, The Author(s), under exclusive license to Springer Nature Switzerland AG.
Observaciones DOI 10.1007/978-3-031-19958-5_4 Lecture Notes in Networks and Systems, v. 569
Lugar Virtual, online
País Indefinido
No. de páginas 34-41
Vol. / Cap. 569 LNNS
Inicio 2022-10-27
Fin 2022-10-28
ISBN/ISSN 9783031199578