Publication | Closed Access
A 128 channel 290 GMACs/W machine learning based co-processor for intention decoding in brain machine interfaces
25
Citations
11
References
2015
Year
Unknown Venue
EngineeringFeature Dimension EnhancementMotor ControlSocial SciencesChannel 290Embedded Machine LearningCognitive NeuroscienceIntention DecodingMotor IntentionNeuroinformaticsComputer EngineeringComputer ScienceSignal ProcessingNeural InterfaceBrain-computer InterfaceComputational NeuroscienceEeg Signal ProcessingMassive ParallelismGmacs/w MachineNeuroscienceBrain-like ComputingBraincomputer Interface
A machine learning co-processor in 0.35μm CMOS for motor intention decoding in the brain-machine interfaces is presented in this paper. Using Extreme Learning Machine algorithm, time delayed sample based feature dimension enhancement, low-power analog processing and massive parallelism, it achieves an energy efficiency of 290 GMACs/W at a classification rate of 50 Hz. A portable external unit based on the proposed co-processor is verified with neural data recorded in monkey finger movements experiment, achieving a decoding accuracy of 99.3%. With time-delayed feature dimension enhancement, the classification accuracy can be increased by 5% with limited number of input channels.
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