Title :
Digital signal processing algorithms for the detection of afferent nerve activity recorded from cuff electrodes
Author :
Upshaw, Barry ; Sinkjaer, Thomas
Author_Institution :
Center for Sensory-Motor Interaction, Aalborg Univ., Denmark
fDate :
6/1/1998 12:00:00 AM
Abstract :
Due to the very poor signal-to-noise ratios (SNR´s) usually encountered with whole nerve-cuff signals, the processing method typically applied, rectification and windowed (bin)-integration (RBI), can have serious shortcomings in extracting reliable information. In order to improve detection accuracy, these signals were further analyzed using statistical signal detection algorithms based on their second and higher order spectra (HOS). A comparison with both analog and digital RBI processing suggests that the statistical methods, due to their ability to separate the signal and noise subspaces, are superior. It was determined that the noise typically encountered with nerve-cuff electrode signals is normally (Gaussian) distributed. Therefore, third-order statistics can be applied to, ideally, completely reject the noise component. When cutaneous nerve recordings from the calcaneal nerve (innervating the heel area) were used in a drop-foot correction neural prosthesis, the detection percentage and the insensitivity to algorithm parameters were increased through the use of these statistical methods as to warrant their real-time implementation, and the inherent additional processing hardware that entails
Keywords :
bioelectric potentials; medical signal processing; neurophysiology; prosthetics; spectral analysis; statistical analysis; afferent nerve activity detection; calcaneal nerve; cuff electrode recordings; digital signal processing algorithms; drop-foot correction neural prosthesis; heel area innervation; higher order spectra; processing hardware; real-time implementation; rectification; reliable information extraction; second order spectra; statistical signal detection algorithms; third-order statistics; windowed integration; Algorithm design and analysis; Data mining; Digital signal processing; Gaussian noise; Signal analysis; Signal detection; Signal processing; Signal processing algorithms; Signal to noise ratio; Statistical analysis;
Journal_Title :
Rehabilitation Engineering, IEEE Transactions on