Optimal Recognition Method of Human Activities Using Artificial Neural Networks

The aim of this research is an exhaustive analysis of the various factors that may influence the recognition rate of the human activity using wearable sensors data. We made a total of 1674 simulations on a publically released human activity database by a group of researcher from the University of Ca...

Full description

Bibliographic Details
Main Authors: Oniga Stefan, József Sütő
Format: Article
Language:English
Published: Sciendo 2015-12-01
Series:Measurement Science Review
Subjects:
Online Access:https://doi.org/10.1515/msr-2015-0044
Description
Summary:The aim of this research is an exhaustive analysis of the various factors that may influence the recognition rate of the human activity using wearable sensors data. We made a total of 1674 simulations on a publically released human activity database by a group of researcher from the University of California at Berkeley. In a previous research, we analyzed the influence of the number of sensors and their placement. In the present research we have examined the influence of the number of sensor nodes, the type of sensor node, preprocessing algorithms, type of classifier and its parameters. The final purpose is to find the optimal setup for best recognition rates with lowest hardware and software costs.
ISSN:1335-8871