Title
A Dataflow-based Mobile Brain Reading System on Chip with Supervised Online Calibration - For Usage without Acquisition of Training Data.
Abstract
Brain activity is more and more used for innovative applications like Brain Computer Interfaces (BCIs). However, in order to be able to use the brain activity, the related psychophysiological data has to be processed and analyzed with sophisticated signal processing and machine learning methods, Usually these methods have to be calibrated with subject-specific data before they can be used. in future systems that implement these methods need to be portable to be applied more flexible tight constraints regarding size, power consumption and computing time have to be met. Field Programmable Gate Arrays (FPGAs) are a promising solution, which are able to meet all the constraints at the same time. Here, we present an FPGA-based mobile system for signal processing and classification. In addition to other systems, it is able to be calibrated and adapt at runtime, which makes the acquistion of training data unnecessary.
Year
DOI
Venue
2013
10.5220/0004637800460053
NEUROTECHNIX: PROCEEDINGS OF THE INTERNATIONAL CONGRESS ON NEUROTECHNOLOGY, ELECTRONICS AND INFORMATICS
Keywords
Field
DocType
Brain Computer Interface,Signal Processing,Machine Learning,FPGA,Embedded Systems,Mobile Computing
Training set,Computer architecture,System on a chip,Computer science,Dataflow,Brain-reading,Multimedia,Calibration
Conference
Citations 
PageRank 
References 
0
0.34
0
Authors
5
Name
Order
Citations
PageRank
Hendrik Wöhrle100.34
Johannes Teiwes2212.95
M. M. Krell3457.53
Elsa Andrea Kirchner46713.60
Frank Kirchner511519.41