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  5. Sampling Frequency Evaluation on Recurrent Neural Networks Architectures for IoT Real-time Fall Detection Devices

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Article
en
2019

Sampling Frequency Evaluation on Recurrent Neural Networks Architectures for IoT Real-time Fall Detection Devices

0 Datasets

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en
2019
DOI: 10.5220/0008494805360541

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Manuel Jesus Dominguez Morales
Manuel Jesus Dominguez Morales

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Francisco Luna-Perejón
Javier Civit-Masot
Luis Muñoz-Saavedra
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Abstract

Falls are one of the most frequent causes of injuries in elderly people.Wearable Fall Detection Systems provided a ubiquitous tool for monitoring and alert when these events happen.Recurrent Neural Networks (RNN) are algorithms that demonstrates a great accuracy in some problems analyzing sequential inputs, such as temporal signal values.However, their computational complexity are an obstacle for the implementation in IoT devices.This work shows a performance analysis of a set of RNN architectures when trained with data obtained using different sampling frequencies.These architectures were trained to detect both fall and fall hazards by using accelerometers and were tested with 10-fold cross validation, using the F1-score metric.The results obtained show that sampling with a frequency of 25Hz does not affect the effectiveness, based on the F1-score, which implies a substantial increase in the performance in terms of computational cost.The architectures with two RNN layers and without a first dense layer had slightly better results than the smallest architectures.In future works, the best architectures obtained will be integrated in an IoT solution to determine the effectiveness empirically.

How to cite this publication

Francisco Luna-Perejón, Javier Civit-Masot, Luis Muñoz-Saavedra, Lourdes Durán-López, I.M. Santos Amaya, Juan P. Domínguez-Morales, Saturnino Vicente-Díaz, Alejandro Linares-Barranco, A Balcells, Manuel Jesus Dominguez Morales (2019). Sampling Frequency Evaluation on Recurrent Neural Networks Architectures for IoT Real-time Fall Detection Devices. , DOI: https://doi.org/10.5220/0008494805360541.

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Publication Details

Type

Article

Year

2019

Authors

10

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.5220/0008494805360541

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