Objective. Among the different approaches for denoising neural signals, wavelet-based methods are widely used due to their ability to reduce in-band noise. All wavelet denoising algorithms have a common structure, but their effectiveness strongly depends on several implementation choices, including the mother wavelet, the decomposition level, the threshold definition, and the way it is applied (i.e. the thresholding). In this work, we investigated these factors to quantitatively assess their effects on neural signals in terms of noise reduction and morphology preservation, which are important when spike sorting is required downstream. Approach. Based on the spectral characteristics of the neural signal, according to the sampling rate of the...
We present a general wavelet-based denoising scheme for functional neuroimages and compare it to Gau...
Abstract:- A Self Learning Neural Network was designed to perform the denoising of signals and to de...
We present a general wavelet-based denoising scheme for functional neuroimages and compare it to Gau...
Objective. Among the different approaches for denoising neural signals, wavelet-based methods are wi...
Objective. Among the different approaches for denoising neural signals, wavelet-based methods are wi...
Objective. Among the different approaches for denoising neural signals, wavelet-based methods are wi...
Objective. Among the different approaches for denoising neural signals, wavelet-based methods are wi...
Objective. Among the different approaches for denoising neural signals, wavelet-based methods are wi...
Objective. Among the different approaches for denoising neural signals, wavelet-based methods are wi...
Neural signal decoding is the basis for the development of neuroprosthetic devices and systems. Depe...
Neural signal decoding is the basis for the development of neuroprosthetic devices and systems. Depe...
Wavelet denoising effectiveness has been proven in neural signal processing applications characteri...
Wavelet denoising effectiveness has been proven in neural signal processing applications characteri...
Wavelet denoising represents a common preprocessing step for several biomedical applications exposin...
Wavelet denoising represents a common preprocessing step for several biomedical applications exposin...
We present a general wavelet-based denoising scheme for functional neuroimages and compare it to Gau...
Abstract:- A Self Learning Neural Network was designed to perform the denoising of signals and to de...
We present a general wavelet-based denoising scheme for functional neuroimages and compare it to Gau...
Objective. Among the different approaches for denoising neural signals, wavelet-based methods are wi...
Objective. Among the different approaches for denoising neural signals, wavelet-based methods are wi...
Objective. Among the different approaches for denoising neural signals, wavelet-based methods are wi...
Objective. Among the different approaches for denoising neural signals, wavelet-based methods are wi...
Objective. Among the different approaches for denoising neural signals, wavelet-based methods are wi...
Objective. Among the different approaches for denoising neural signals, wavelet-based methods are wi...
Neural signal decoding is the basis for the development of neuroprosthetic devices and systems. Depe...
Neural signal decoding is the basis for the development of neuroprosthetic devices and systems. Depe...
Wavelet denoising effectiveness has been proven in neural signal processing applications characteri...
Wavelet denoising effectiveness has been proven in neural signal processing applications characteri...
Wavelet denoising represents a common preprocessing step for several biomedical applications exposin...
Wavelet denoising represents a common preprocessing step for several biomedical applications exposin...
We present a general wavelet-based denoising scheme for functional neuroimages and compare it to Gau...
Abstract:- A Self Learning Neural Network was designed to perform the denoising of signals and to de...
We present a general wavelet-based denoising scheme for functional neuroimages and compare it to Gau...