Skip to main content
Applied PDE Group
AppliedPDE
Applied PDE Group
Main navigation
Home
People
All Profiles
Faculty
Postdoctoral Fellows
Students
Alumni
Former Members
Events
All Events
Events Calendar
News
Publications
Research topics
Teaching
Visitors
Photos of Group
smo
Low-Power Hardware Implementation of a Support Vector Machine Training and Classification for Neural Seizure Detection
1 min read ·
Thu, Apr 25 2019
News
Circuits
FPGA
smo
Heba Elhosary, et al., "Low-Power Hardware Implementation of a Support Vector Machine Training and Classification for Neural Seizure Detection." IEEE Transactions on Biomedical Circuits and Systems 13 (6), 2019, 1324. In this paper, a low power support vector machine (SVM) training, feature extraction, and classification algorithm are hardware implemented in a neural seizure detection application. The training algorithm used is the sequential minimal optimization (SMO) algorithm. The system is implemented on different platforms: such as field programmable gate array (FPGA), Xilinx Virtex-7 and