Title
A mobile embedded platform for high performance neural signal computation and communication
Abstract
We have designed and implemented a new compact, high performance neural signal processing system for wearable neurotechnology platforms. The low-power embedded system (referred to hereafter as ESPA) prototype wirelessly receives, records, and processes 200 channels of broadband neural data, demonstrated here in a non-human primate. The subject is implanted with intracortical micro-electrode arrays (MEAs) with a head-mounted wireless neural signal transmitting device. The fully integrated embedded system manages and processes neural data using state-of-the art all-programmable system on a Chip (SoC) technology. The utilized SoC provides substantial digital signal processing hardware in the form of a field programmable gate array (FPGA) subsystem. This programmable logic (PL) subsystem connects through high-bandwidth busses to the SoC's mobile processor system (PS) which provides SoC management and communication capabilities through the use of a real-time operating system. The performance of the system was first benchtop tested using 200 channels of 30ksps simulated neural data which underwent neural signal pre-processing, filtering, and feature extraction implemented on the PL subsystem. The raw and processed data were streamed to the PS where it underwent further processing before being communicated wirelessly to a backend server via Wi-Fi. The SoC only required an estimated 2.01W of power during this test. Next, in an application demonstration, a rhesus macaque performed a dexterous manual grasp task. Wirelessly received broadband neural data was communicated by the prototype embedded system to a backend server for real-time file storage and off-line spike feature extraction and hand-grip classification. Successful grip classification was demonstrated by achieving comparable classification accuracy to a conventional rackmounted commercial neural signal processor.
Year
DOI
Venue
2015
10.1109/BioCAS.2015.7348356
2015 IEEE Biomedical Circuits and Systems Conference (BioCAS)
Keywords
Field
DocType
neural prosthetics,wireless,embedded system,mobile,multichannel,FPGA,Xilinx,real-time,QNX,multielectrode,neural decoding,paralysis,ALS,medical device
Signal processing,Digital signal processing,System on a chip,Computer science,Digital signal processor,Mobile processor,Field-programmable gate array,Electronic engineering,Neural decoding,Computer hardware,Programmable logic device,Embedded system
Conference
ISSN
Citations 
PageRank 
2163-4025
0
0.34
References 
Authors
3
5
Name
Order
Citations
PageRank
christopher heelan100.34
Jacob Komar210.82
Carlos E. Vargas-Irwin300.34
John D. Simeral4203.07
Nurmikko, A.502.37