DocumentCode :
1430226
Title :
A Subspace Approach to Learning Recurrent Features From Brain Activity
Author :
Gowreesunker, B. Vikrham ; Tewfik, Ahmed H. ; Tadipatri, Vijay A. ; Ashe, James ; Pellize, Giuseppe ; Gupta, Rahul
Author_Institution :
Syst. & Applic. R&D Center, Texas Instrum. Inc., Dallas, TX, USA
Volume :
19
Issue :
3
fYear :
2011
fDate :
6/1/2011 12:00:00 AM
Firstpage :
240
Lastpage :
248
Abstract :
This paper introduces a novel technique to address the instability and time variability challenges associated with brain activity recorded on different days. A critical challenge when working with brain signal activity is the variability in their characteristics when the signals are collected in different sessions separated by a day or more. Such variability is due to the acute and chronic responses of the brain tissue after implantation, variations as the subject learns to optimize performance, physiological changes in a subject due to prior activity or rest periods and environmental conditions. We propose a novel approach to tackle signal variability by focusing on learning subspaces which are recurrent over time. Furthermore, we illustrate how we can use projections on those subspaces to improve classification for an application such as brain-machine interface (BMI). In this paper, we illustrate the merits of finding recurrent subspaces in the context of movement direction decoding using local field potential (LFP). We introduce two methods for using the learned subspaces in movement direction decoding and show a decoding power improvement from 76% to 88% for a particularly unstable subject and consistent decoding across subjects.
Keywords :
bioelectric potentials; brain; brain-computer interfaces; medical signal processing; neurophysiology; acute responses; brain signal activity; brain tissue; brain-machine interface; chronic responses; implantation; instability; local field potential; recurrent feature; subspace approach; time variability; Brain; Data mining; Decoding; Electronic mail; Feature extraction; Training; Training data; Brain activity signals; brain–machine interface (BMI); iterative subspace identification; sparse representation; time variability; Algorithms; Artificial Intelligence; Brain; Computer Simulation; Electroencephalography; Evoked Potentials, Motor; Humans; Movement; Neurons; Reproducibility of Results; User-Computer Interface;
fLanguage :
English
Journal_Title :
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1534-4320
Type :
jour
DOI :
10.1109/TNSRE.2011.2106802
Filename :
5692835
Link To Document :
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