Title :
Enabling a real-time solution for neuron detection with reconfigurable hardware
Author :
Cordes, Ben ; Dy, Jennifer ; Leeser, Miriam ; Goebel, James
Author_Institution :
Northeastern Univ., Boston, MA, USA
Abstract :
FPGAs provide a speed advantage in processing for embedded systems, especially when processing is moved close to the sensors. Perhaps the ultimate embedded system is a neural prosthetic, where probes are inserted into the brain and recorded electrical activity is analyzed to determine which neurons have fired. In turn, this information can be used to manipulate an external device such as a robot arm or a computer mouse. To make the detection of these signals possible, some baseline data must be processed to correlate impulses to particular neurons. One method for processing this data uses a statistical clustering algorithm called expectation maximization, or EM. In this paper, we examine the EM clustering algorithm, determine the most computationally intensive portion, map it onto a reconfigurable device, and show several areas of performance gain.
Keywords :
bioelectric potentials; brain; embedded systems; field programmable gate arrays; medical signal processing; neural chips; probes; prosthetics; reconfigurable architectures; statistical analysis; EM statistical clustering algorithm; FPGA; computer mouse; embedded systems; expectation maximization algorithm; neural prosthetic; neuron detection; probes; reconfigurable hardware; robot arm; Clustering algorithms; Embedded system; Field programmable gate arrays; Hardware; Mice; Neurons; Probes; Prosthetics; Robot sensing systems; Sensor systems;
Conference_Titel :
Rapid System Prototyping, 2005. (RSP 2005). The 16th IEEE International Workshop on
Print_ISBN :
0-7695-2361-7
DOI :
10.1109/RSP.2005.24