The output of many instruments can be modeled as a convolution of an impulse response and a series of sharp spikes. Deconvolution considers the inverse problem: estimate the input spike train from an observed (noisy) output signal. We approach this task as a linear inverse problem, solved using penalized regression. We propose the use of an L(0) penalty and compare it with the more common L(2) and L(1) penalties. In all cases a simple and iterative weighted regression procedure can be used. The model is extended with a smooth component to handle drifting baselines. Application to three different data sets shows excellent results. (C) 2011 Elsevier B.V. All rights reserved
International audienceAn experimentally recorded time series formed by the exact times of occurrence...
This paper deals with the problem of finding a low-complexity estimate of the impulse response of a ...
This chapter contains sections titled: Introduction Difficulties of the Deconvolution Prob...
This paper describes a parametric deconvolution method(PDPS) appropriate for a particular class of s...
Abstract—A new deconvolution method of sparse spike trains is presented. It is based on the coupling...
This paper discusses linear inverse filtering (deconvolution) from a stochastic signal processing po...
Deconvolution is usually regarded as one of the so called ill-posed problems of applied mathematics ...
Consider the transform from a discrete neuronal spike train to a continuous neurophysiological respo...
International audienceThe problem of signal deconvolution occurs in many appllcations, particularly ...
Question. Consider the transform from a discrete spike train to a contin-uous neurophysiological res...
This paper describes how the impulse response function of a linear and time invariant dynamic system...
Spike deconvolution is the problem of recovering the point sources from their convolution with a kno...
Deconvolution of noisy signals is an important task in analytical chemistry, examples being spectral...
The temporal waveform of neural activity is commonly estimated by low-pass filtering spike train dat...
In this paper, we consider the vector-matrix model of a pulsed neuron, focused on solving problems o...
International audienceAn experimentally recorded time series formed by the exact times of occurrence...
This paper deals with the problem of finding a low-complexity estimate of the impulse response of a ...
This chapter contains sections titled: Introduction Difficulties of the Deconvolution Prob...
This paper describes a parametric deconvolution method(PDPS) appropriate for a particular class of s...
Abstract—A new deconvolution method of sparse spike trains is presented. It is based on the coupling...
This paper discusses linear inverse filtering (deconvolution) from a stochastic signal processing po...
Deconvolution is usually regarded as one of the so called ill-posed problems of applied mathematics ...
Consider the transform from a discrete neuronal spike train to a continuous neurophysiological respo...
International audienceThe problem of signal deconvolution occurs in many appllcations, particularly ...
Question. Consider the transform from a discrete spike train to a contin-uous neurophysiological res...
This paper describes how the impulse response function of a linear and time invariant dynamic system...
Spike deconvolution is the problem of recovering the point sources from their convolution with a kno...
Deconvolution of noisy signals is an important task in analytical chemistry, examples being spectral...
The temporal waveform of neural activity is commonly estimated by low-pass filtering spike train dat...
In this paper, we consider the vector-matrix model of a pulsed neuron, focused on solving problems o...
International audienceAn experimentally recorded time series formed by the exact times of occurrence...
This paper deals with the problem of finding a low-complexity estimate of the impulse response of a ...
This chapter contains sections titled: Introduction Difficulties of the Deconvolution Prob...