<div><p>Tracking moving objects, including one’s own body, is a fundamental ability of higher organisms, playing a central role in many perceptual and motor tasks. While it is unknown how the brain learns to follow and predict the dynamics of objects, it is known that this process of state estimation can be learned purely from the statistics of noisy observations. When the dynamics are simply linear with additive Gaussian noise, the optimal solution is the well known Kalman filter (KF), the parameters of which can be learned via latent-variable density estimation (the EM algorithm). The brain does not, however, directly manipulate matrices and vectors, but instead appears to represent probability distributions with the firing rates of popul...
The robust estimation of dynamically changing features, such as the position of prey, is one of the ...
The computational task of continuous-time state estimation, nonlinear filtering and identification, ...
Embodied agents, be they animals or robots, acquire information about the world through their senses...
© 2015 Makin et al.Tracking moving objects, including one’s own body, is a fundamental ability of hi...
Whether it\u27s chasing down prey or avoiding cars on the freeway, animals need to be able to keep t...
We propose a theoretical framework for efficient representation of time-varying sensory information ...
International audienceIn the context of sensory or higher-level cognitive processing, we present a r...
There is a wealth of approaches to understanding the ways that populations of neurons encode static,...
International audienceCompelling behavioral evidence suggests that humans can make optimal decisions...
This study investigates a population decoding paradigm, in which the estimation of stimulus in the p...
A fundamental task for both biological perception systems and human-engineered agents is to infer un...
Ongoing advances in experimental technique are making commonplace simultaneous recordings of the act...
zemelOu.arizona.edu We study the problem of statistically correct inference in networks whose basic ...
The robust estimation of dynamical hidden features, such as the position of prey, based on sensory i...
How the brain makes correct inferences about its environment based on noisy and ambiguous observatio...
The robust estimation of dynamically changing features, such as the position of prey, is one of the ...
The computational task of continuous-time state estimation, nonlinear filtering and identification, ...
Embodied agents, be they animals or robots, acquire information about the world through their senses...
© 2015 Makin et al.Tracking moving objects, including one’s own body, is a fundamental ability of hi...
Whether it\u27s chasing down prey or avoiding cars on the freeway, animals need to be able to keep t...
We propose a theoretical framework for efficient representation of time-varying sensory information ...
International audienceIn the context of sensory or higher-level cognitive processing, we present a r...
There is a wealth of approaches to understanding the ways that populations of neurons encode static,...
International audienceCompelling behavioral evidence suggests that humans can make optimal decisions...
This study investigates a population decoding paradigm, in which the estimation of stimulus in the p...
A fundamental task for both biological perception systems and human-engineered agents is to infer un...
Ongoing advances in experimental technique are making commonplace simultaneous recordings of the act...
zemelOu.arizona.edu We study the problem of statistically correct inference in networks whose basic ...
The robust estimation of dynamical hidden features, such as the position of prey, based on sensory i...
How the brain makes correct inferences about its environment based on noisy and ambiguous observatio...
The robust estimation of dynamically changing features, such as the position of prey, is one of the ...
The computational task of continuous-time state estimation, nonlinear filtering and identification, ...
Embodied agents, be they animals or robots, acquire information about the world through their senses...