This paper introduces a new, unsupervised method for sorting and tracking the non-stationary spike signals of individual neurons in multi-unit extracellular recordings. While this method may be applied to a variety of problems that arise in the field of neural interfaces, its development is motivated by a new class of autonomous neural recording devices. The core of the proposed strategy relies upon an extension of a traditional expectation-maximization (EM) mixture model optimization to incorporate clustering results from the preceding recording interval in a Bayesian manner. Explicit filtering equations for the case of a Gaussian mixture are derived. Techniques using prior data to seed the EM iterations and to select the appropriate model...
<div><p>Recording extracellulary from neurons in the brains of animals in vivo is among the most est...
Recording extracellulary from neurons in the brains of animals in vivo is among the most established...
Abstract—We propose a methodology for joint feature learning and clustering of multichannel extracel...
This paper introduces a new, unsupervised method for sorting and tracking the non-stationary spike s...
This paper introduces a new, unsupervised method for sorting and tracking the action potentials of i...
This paper introduces a new methodology for tracking signals from individual neurons over time in mu...
This thesis presents new methods for classifying and tracking the signals of targets that produce cl...
Spike sorting involves clustering spikes recorded by a micro-electrode according to the source neuro...
We examine the problem of estimating the spike trains of multiple neurons from voltage traces record...
Abstract — This paper summarizes an algorithm to au-tonomously position an extracellular recording e...
This paper summarizes an algorithm to autonomously position an extracellular recording electrode so ...
This dissertation describes a novel mathematical algorithm for extracting spike data and positional ...
Abstract—Neural spike sorting is an indispensable step in the analysis of multiunit extracellular ne...
25 pages, to be published in Journal of Neurocience MethodsWe demonstrate the efficacy of a new spik...
<p>Modern electrophysiological and optical recording techniques allow for the simultaneous monitorin...
<div><p>Recording extracellulary from neurons in the brains of animals in vivo is among the most est...
Recording extracellulary from neurons in the brains of animals in vivo is among the most established...
Abstract—We propose a methodology for joint feature learning and clustering of multichannel extracel...
This paper introduces a new, unsupervised method for sorting and tracking the non-stationary spike s...
This paper introduces a new, unsupervised method for sorting and tracking the action potentials of i...
This paper introduces a new methodology for tracking signals from individual neurons over time in mu...
This thesis presents new methods for classifying and tracking the signals of targets that produce cl...
Spike sorting involves clustering spikes recorded by a micro-electrode according to the source neuro...
We examine the problem of estimating the spike trains of multiple neurons from voltage traces record...
Abstract — This paper summarizes an algorithm to au-tonomously position an extracellular recording e...
This paper summarizes an algorithm to autonomously position an extracellular recording electrode so ...
This dissertation describes a novel mathematical algorithm for extracting spike data and positional ...
Abstract—Neural spike sorting is an indispensable step in the analysis of multiunit extracellular ne...
25 pages, to be published in Journal of Neurocience MethodsWe demonstrate the efficacy of a new spik...
<p>Modern electrophysiological and optical recording techniques allow for the simultaneous monitorin...
<div><p>Recording extracellulary from neurons in the brains of animals in vivo is among the most est...
Recording extracellulary from neurons in the brains of animals in vivo is among the most established...
Abstract—We propose a methodology for joint feature learning and clustering of multichannel extracel...