This paper proposes an algorithm for adaptive, sequential classification in systems with unknown labeling errors, focusing on the biomedical application of Brain Computer Interfacing (BCI). The method is shown to be robust in the presence of label and sensor noise. We focus on the inference and prediction of target labels under a nonlinear and non-Gaussian model. In order to handle missing or erroneous labeling, we model observed labels as a noisy observation of a latent label set with multiple classes (≥2). Whilst this paper focuses on the method's application to BCI systems, the algorithm has the potential to be applied to many application domains in which sequential missing labels are to be imputed in the presence of uncertainty. This dy...
Many data analysis problems require robust tools for discerning between states or classes in the dat...
A fundamental task for both biological perception systems and human-engineered agents is to infer un...
Abstract — This paper suggests a probabilistic treatment of the signal processing part of a brain co...
Adaptive classification is a key function of Brain Computer Interfacing (BCI) systems. This paper pr...
Adaptive classification is a key function of Brain Computer Interfacing (BCI) systems. This paper pr...
In this article, we present an adaptive classifier for BCI based on a mixture of Gaussian (moG) mode...
This paper proposes the use of variational Kalman filtering as an inference technique for adaptive c...
This paper proposes the use of variational Kalman filtering as an inference technique for adaptive c...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
<p>Brain-machine interfaces (BMI) are systems which connect brains directly to machines or computers...
To estimate at time t, Bayesian filtering treats the state variables as missing data and forms the ...
Given a stationary state-space model that relates a sequence of hidden states and corresponding meas...
Preliminary results from real-time 'brain-computer interface' experiments are presented. The analysi...
Preliminary results from real-time 'brain-computer interface' experiments are presented. The analysi...
Many data analysis problems require robust tools for discerning between states or classes in the dat...
A fundamental task for both biological perception systems and human-engineered agents is to infer un...
Abstract — This paper suggests a probabilistic treatment of the signal processing part of a brain co...
Adaptive classification is a key function of Brain Computer Interfacing (BCI) systems. This paper pr...
Adaptive classification is a key function of Brain Computer Interfacing (BCI) systems. This paper pr...
In this article, we present an adaptive classifier for BCI based on a mixture of Gaussian (moG) mode...
This paper proposes the use of variational Kalman filtering as an inference technique for adaptive c...
This paper proposes the use of variational Kalman filtering as an inference technique for adaptive c...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
<p>Brain-machine interfaces (BMI) are systems which connect brains directly to machines or computers...
To estimate at time t, Bayesian filtering treats the state variables as missing data and forms the ...
Given a stationary state-space model that relates a sequence of hidden states and corresponding meas...
Preliminary results from real-time 'brain-computer interface' experiments are presented. The analysi...
Preliminary results from real-time 'brain-computer interface' experiments are presented. The analysi...
Many data analysis problems require robust tools for discerning between states or classes in the dat...
A fundamental task for both biological perception systems and human-engineered agents is to infer un...
Abstract — This paper suggests a probabilistic treatment of the signal processing part of a brain co...