Statistical learning and probabilistic inference techniques are used to infer the hand position of a subject from multi-electrode recordings of neural activity in motor cortex. First, an array of electrodes provides training data of neural firing conditioned on hand kinematics. We learn a nonparametric representation of this firing activity using a Bayesian model and rigorously compare it with previous models using cross-validation. Second, we infer a posterior probability distribution over hand motion conditioned on a sequence of neural test data using Bayesian inference. The learned firing models of multiple cells are used to define a non-Gaussian likelihood term which is combined with a prior probability for the kinematics. A particle fi...
We devise and experiment with a dynamical kernel-based system for tracking hand movements from neura...
The hand has evolved to allow specialized interactions with our surroundings that define much of wha...
Theoretical thesis.Bibliography: pages 80-92.1. General introduction -- 2. Investigating interlimb g...
Statistical learning and probabilistic inference techniques are used to infer the hand position of ...
Effective neural motor prostheses require a method for decoding neural activity representing desired...
Abstract We present a Switching Kalman Filter Model (SKFM) for the real-time inference of hand kinem...
We develop an Autoregressive Moving Average (ARMA) model for decoding hand motion from neural firing...
<p>The primate hand, a biomechanical structure with over twenty kinematic degrees of freedom, has an...
Neural prosthetic technology has moved from the laboratory to clinical settings with human trials. T...
The direct neural control of external devices such as computer displays or prosthetic limbs requires...
When we learn a new motor skill, we have to contend with both the vari-ability inherent in our senso...
Abstract—The Kalman filter has been proposed as a model to decode neural activity measured from the ...
Many decoding algorithms for brain machine interfaces ’ (BMIs) estimate hand movement from binned sp...
Abstract — The direct neural control of external prosthetic devices such as robot hands requires the...
Abstract — This paper develops probabilistic methods for visual tracking of a three-dimensional geom...
We devise and experiment with a dynamical kernel-based system for tracking hand movements from neura...
The hand has evolved to allow specialized interactions with our surroundings that define much of wha...
Theoretical thesis.Bibliography: pages 80-92.1. General introduction -- 2. Investigating interlimb g...
Statistical learning and probabilistic inference techniques are used to infer the hand position of ...
Effective neural motor prostheses require a method for decoding neural activity representing desired...
Abstract We present a Switching Kalman Filter Model (SKFM) for the real-time inference of hand kinem...
We develop an Autoregressive Moving Average (ARMA) model for decoding hand motion from neural firing...
<p>The primate hand, a biomechanical structure with over twenty kinematic degrees of freedom, has an...
Neural prosthetic technology has moved from the laboratory to clinical settings with human trials. T...
The direct neural control of external devices such as computer displays or prosthetic limbs requires...
When we learn a new motor skill, we have to contend with both the vari-ability inherent in our senso...
Abstract—The Kalman filter has been proposed as a model to decode neural activity measured from the ...
Many decoding algorithms for brain machine interfaces ’ (BMIs) estimate hand movement from binned sp...
Abstract — The direct neural control of external prosthetic devices such as robot hands requires the...
Abstract — This paper develops probabilistic methods for visual tracking of a three-dimensional geom...
We devise and experiment with a dynamical kernel-based system for tracking hand movements from neura...
The hand has evolved to allow specialized interactions with our surroundings that define much of wha...
Theoretical thesis.Bibliography: pages 80-92.1. General introduction -- 2. Investigating interlimb g...