Myoelectric Signal Classification Using A Finite Impulse Response Neural Network

dc.contributor.author

Englehart, K. B.

dc.contributor.author

Hudgins, B. S.

dc.contributor.author

Stevenson, M.

dc.contributor.author

Parker, P. A.

dc.date.accessioned

2011-10-03T16:11:17Z

dc.date.available

2011-10-03T16:11:17Z

dc.date.issued

1994

dc.description.abstract

Recent work by Hudgins has proposed a neural network-based approach to classifying themyoelectric signal (MES) elicited at the onset of movement of the upper limb. A standard feed forward artificial network was trained (using the backpropagation algorithm) to discriminatearnongst four classes of upper-limb movements from the MES acquired from the biceps and triceps muscles The approach has demonstrated a powerful means of classifying limb function intent from the MES during natural muscular contraction, but the static nature of the network architecture fails to fullycharacterize the dynamic structure inherent in the MES. It has been demonstrated that a finite-impulseresponse (FIR) network has the ability to incorporate the temporal structure of a signal, representing the relationships between events in time and providing translation invariance of the relevant feature set. The application of this network architecture to limb function discrimination from the MES is described here.

dc.identifier.citation

From "MEC 94," Proceedings of the 1993 MyoElectric Controls/Powered Prosthetics Symposium Fredericton, New Brunswick, Canada: August, 1994. Copyright University of New Brunswick.

dc.identifier.uri

https://hdl.handle.net/10161/4847

dc.publisher

Myoelectric Symposium

dc.subject

Neural Networks

dc.subject

Myoelectric Signal

dc.subject

Prosthetic Control

dc.title

Myoelectric Signal Classification Using A Finite Impulse Response Neural Network

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
1994 Myoelectric signal classification using a finite impulse response neural network.pdf
Size:
831.04 KB
Format:
Adobe Portable Document Format