DocumentCode
3152365
Title
Locally-Stationary Multivalriate AR Model Analysis of Forearm Electromyographic Signals on Handwritiing Movements
Author
Kosaku, T. ; Sano, M. ; Benrejeb, M. ; El Abed-Abdelkrim, A.
Author_Institution
Dept. of Comput. & Media Technol., Hiroshima City Univ.
Volume
1
fYear
2006
fDate
4-6 Oct. 2006
Firstpage
278
Lastpage
283
Abstract
The goal of this study is to construct a mathematical model connecting with motor commands from the brain and handwriting movements on a forearm-hand-pen system. It is assumed that the motor commands can be known indirectly from the electromyographic (EMG) signals on the forearm surface. This is equivalent to be possible to predict written letters from the EMG signals. At first, the EMG signals and the pen-tip movements on writing some letters are measured. The measured EMG signals are analyzed by the locally-stationary multivariate auto-regressive (AR) model. Then, we assume that the locally-stationary EMG signals are the stochastic process based on the AR model driven by the motor commands as Gaussian white noise and we can estimate the electronic signals to the motor commands on each forearm muscle. Moreover, we wish to describe and identify the forearm-hand-pen system as the parametric linear model whose inputs are the estimated motor commands and whose outputs are the pen-tip movements on writing letters. Finally, we would like to reproduce written letters from the measured EMG signals and discuss the results
Keywords
AWGN; autoregressive processes; biocontrol; electromyography; gesture recognition; Gaussian white noise; brain; electronic signals; forearm electromyographic signals; forearm muscle; forearm surface; forearm-hand-pen system; handwriting movements; locally-stationary EMG signals; motor commands; multivariate AR model analysis; multivariate autoregressive model; pen-tip movements; stochastic process; Electromyography; Electronic mail; Mathematical model; Motion measurement; Muscles; Signal analysis; Signal processing; Stochastic processes; White noise; Writing; Electromyogram; Handwriting; Modeling; Motor Command; Multivariate Auto-Regressive Model;
fLanguage
English
Publisher
ieee
Conference_Titel
Computational Engineering in Systems Applications, IMACS Multiconference on
Conference_Location
Beijing
Print_ISBN
7-302-13922-9
Electronic_ISBN
7-900718-14-1
Type
conf
DOI
10.1109/CESA.2006.4281663
Filename
4281663
Link To Document