DocumentCode
1800009
Title
Gait phase detection optimization based on variational bayesian inference of feedback sensor signal
Author
Malesevic, Nebojsa ; Malesevic, Jovana ; Keller, Thierry
Author_Institution
Tecnalia Serbia, Belgrade, Serbia
fYear
2014
fDate
25-27 Nov. 2014
Firstpage
179
Lastpage
182
Abstract
Stroke patients often suffer from gait disorders which can remain chronic. Mechanical or electrical aids designed to deal with this problem often rely on accurate estimation of current gait phase as this information is used for active ankle joint control. In this paper we present the method for optimization of the gait phase detection algorithm. The method is based on Variational Bayesian inference which is employed on signals from feedback sensors positioned on both paretic and healthy foot of patient. Main aim of Variational Bayesian inference application was to remove noise and provide smooth sensor signal which is suitable for robust gait phase detection algorithm. We modeled foot trajectory with linear model. Results presented in this paper show significant reduction of high frequency noise in gyroscope signal. The reduction was dominant during transitions between gait phases making our method applicable in any algorithm based on signal features in time domain.
Keywords
Bayes methods; biological tissues; biomedical equipment; biomedical measurement; brain; feature extraction; feedback; gait analysis; gyroscopes; handicapped aids; inference mechanisms; linear systems; medical control systems; medical disorders; medical signal detection; medical signal processing; neurophysiology; optimisation; physiological models; signal denoising; smoothing methods; variational techniques; active ankle joint control; chronic gait disorder; electrical aid design; feedback sensor positioning; feedback sensor signal; foot trajectory modeling; gait phase detection algorithm optimization; gait phase estimation accuracy; gait phase transition; gyroscope signal; healthy foot; high frequency noise reduction; linear model; mechanical aid design; noise removal; paretic foot; robust gait phase detection algorithm; sensor signal smoothing; signal feature; stroke patient; time domain feature; variational Bayesian inference; Bayes methods; Event detection; Foot; Inference algorithms; Legged locomotion; Noise; Phase detection; Bayesian inference; FES; drop foot; gait kinematics; variational;
fLanguage
English
Publisher
ieee
Conference_Titel
Neural Network Applications in Electrical Engineering (NEUREL), 2014 12th Symposium on
Conference_Location
Belgrade
Print_ISBN
978-1-4799-5887-0
Type
conf
DOI
10.1109/NEUREL.2014.7011499
Filename
7011499
Link To Document