Home  |   Login  |   Logout  |   Access Information  |   Alerts  |   Purchase History  |   Cart  |   Sitemap  |   Help   
 
Abstract
BROWSE SEARCH IEEE XPLORE GUIDE SUPPORT
arrow_leftView TOC
Email/Printer Friendly Format  
 

Computational complexity versus accuracy in classification of cortical neural signals
Tenore, F.   Aggarwal, V.   White, J.R.   Schieber, M.H.   Thakor, N.V.  
Appl. Phys. Lab., Johns Hopkins Univ., Laurel, MD, USA;

This paper appears in: Neural Engineering, 2009. NER '09. 4th International IEEE/EMBS Conference on
Publication Date: April 29 2009-May 2 2009
On page(s): 750-753
Location: Antalya,
ISBN: 978-1-4244-2072-8
INSPEC Accession Number: 10747272
Digital Object Identifier: 10.1109/NER.2009.5109405
Current Version Published: 2009-06-23

Abstract
This paper analyzes different computational methods for real-time decoding of neural signals in primary motor cortex (M1). Specifically, we compare different classifiers as well as different Principal Component Analysis (PCA)-based pre-classification strategies to identify how to proceed in terms of the necessary trade-off between computational complexity and accuracy. Our methods are applied to neural data in monkey, recorded while performing dexterous hand and finger movement tasks. We show that differences due to selection of a classifier using the same feature set are statistically significant for reduced sets of neurons, and specifically that neural networks are to be preferred to a linear classifier. Furthermore, we show that using PCA-based methods prior to neural network-based classification yields statistically equal real-time decoding accuracies using less than 20% of principal components. We therefore conclude that performing PCA prior to classification with a smaller feature space statistically provides the same or better decoding accuracies as those obtained using a larger feature space and a linear or non-linear classifier.

Index Terms
Available to subscribers and IEEE members.

References
Available to subscribers and IEEE members.
Citing Documents
Available to subscribers and IEEE members.
You are not logged in.
Guests may access Abstract records free of charge.
Login
Username
Password
» Forgot your password?
Please remember to log out when you have finished your session.
You must log in to access:
• Advanced or Author Search
• CrossRef Search
• AbstractPlus Records
• Full Text PDF
• Full Text HTML
Access this document
Full Text: PDF (415 KB)
» Buy this document now
»  Learn more about
»  Learn more about
    purchasing articles
    and standards

Rights and Permissions
» Learn More
Download this citation
Available to subscribers and IEEE members.
 
arrow_leftView TOC   |  Back to toparrow_up
Indexed by IEE Inspec
© Copyright 2009 IEEE – All Rights Reserved