This paper presents a novel hardware architecture for fast spike sorting. The architecture is able to perform both the feature extraction and clustering in hardware. The generalized Hebbian algorithm (GHA) and fuzzy C-means (FCM) algorithm are used for feature extraction and clustering, respectively. The employment of GHA allows efficient computation of principal components for subsequent clustering operations. The FCM is able to achieve near optimal clustering for spike sorting. Its performance is insensitive to the selection of initial cluster centers. The hardware implementations of GHA and FCM feature low area costs and high throughput. In the GHA architecture, the computation of different weight vectors share the same circuit for lower...
Abstract: Proper classification of spikes from extracellular recordings is essential for the study o...
This paper presents a novel hardware architecture for principal component analysis. The architecture...
Recent advances in the field of neuroscience have suggested that new generation brain computer inte...
A novel hardware architecture for fast spike sorting is presented in this paper. The architecture is...
A novel VLSI architecture for multi-channel online spike sorting is presented in this paper. In the ...
The goal of this paper is to present a novel VLSI architecture for spike sorting with high classific...
This study aims to present an effective VLSI circuit for multi-channel spike sorting. The circuit su...
[[abstract]]A novel hardware architecture for c-means clustering is presented in this paper. Our arc...
[[abstract]]A cost-effective parallel VLSI architecture for fuzzy c-means clustering is presented. T...
Objective. Spike sorting is a set of techniques used to analyze extracellular neural recordings, att...
Brain-machine interfaces require real-time, wireless signal acquisition systems. However, wireless t...
Real-time multichannel neuronal signal recording has spawned broad applications in neuro-prostheses ...
This thesis presents a sampling-based hardware implementation of neuron spike sorting. Neuron spike ...
K-means clustering has been widely used in processing large datasets in many fields of studies. Adva...
We present a fast general-purpose algorithm for high-throughput clustering of data ”with a two dimen...
Abstract: Proper classification of spikes from extracellular recordings is essential for the study o...
This paper presents a novel hardware architecture for principal component analysis. The architecture...
Recent advances in the field of neuroscience have suggested that new generation brain computer inte...
A novel hardware architecture for fast spike sorting is presented in this paper. The architecture is...
A novel VLSI architecture for multi-channel online spike sorting is presented in this paper. In the ...
The goal of this paper is to present a novel VLSI architecture for spike sorting with high classific...
This study aims to present an effective VLSI circuit for multi-channel spike sorting. The circuit su...
[[abstract]]A novel hardware architecture for c-means clustering is presented in this paper. Our arc...
[[abstract]]A cost-effective parallel VLSI architecture for fuzzy c-means clustering is presented. T...
Objective. Spike sorting is a set of techniques used to analyze extracellular neural recordings, att...
Brain-machine interfaces require real-time, wireless signal acquisition systems. However, wireless t...
Real-time multichannel neuronal signal recording has spawned broad applications in neuro-prostheses ...
This thesis presents a sampling-based hardware implementation of neuron spike sorting. Neuron spike ...
K-means clustering has been widely used in processing large datasets in many fields of studies. Adva...
We present a fast general-purpose algorithm for high-throughput clustering of data ”with a two dimen...
Abstract: Proper classification of spikes from extracellular recordings is essential for the study o...
This paper presents a novel hardware architecture for principal component analysis. The architecture...
Recent advances in the field of neuroscience have suggested that new generation brain computer inte...