The selective attention for identification model (SAIM) is an established model of selective visual attention. SAIM implements translation-invariant object recognition, in scenes with multiple objects, using the parallel distributed processing (PDP) paradigm. Here, we show that SAIM can be formulated as Bayesian inference. Crucially, SAIM uses excitatory feedback to combine top-down information (i.e. object knowledge) with bottom-up sensory information. By contrast, predictive coding implementations of Bayesian inference use inhibitory feedback. By formulating SAIM as a predictive coding scheme, we created a new version of SAIM that uses inhibitory feedback. Simulation studies showed that both types of architectures can reproduce the respon...
AbstractWe describe a model of invariant visual object recognition in the brain that incorporates fe...
AbstractScrutiny of the numerous physiology and imaging studies of visual attention reveal that inte...
Perception is often characterized as an inference process in which the brain unconsciously reasons a...
The past four decades of research in visual neuroscience has generated a large and disparate body of...
A number of recent theoretical models, based on Bayesian probability theory, have formalized the nee...
Predictive coding posits that the human brain continually monitors the environment for regularities ...
© 2020 The Authors Selective attention informs decision-making by biasing perceptual processing towa...
AbstractIn the theoretical framework of this paper, attention is part of the inference process that ...
Inferring the environment's statistical structure and adapting behavior accordingly is a fundamental...
The deployment of visuospatial attention and the programming of saccades are governed by the inferre...
Inferring the environment's statistical structure and adapting behavior accordingly is a fundamental...
The human brain effortlessly solves problems that still pose a challenge for modern computers, such ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
David Marr famously defined vision as "knowing what is where by seeing". In the framework described ...
Attention acts, through cortical feedback pathways, to enhance the response of cells encoding expect...
AbstractWe describe a model of invariant visual object recognition in the brain that incorporates fe...
AbstractScrutiny of the numerous physiology and imaging studies of visual attention reveal that inte...
Perception is often characterized as an inference process in which the brain unconsciously reasons a...
The past four decades of research in visual neuroscience has generated a large and disparate body of...
A number of recent theoretical models, based on Bayesian probability theory, have formalized the nee...
Predictive coding posits that the human brain continually monitors the environment for regularities ...
© 2020 The Authors Selective attention informs decision-making by biasing perceptual processing towa...
AbstractIn the theoretical framework of this paper, attention is part of the inference process that ...
Inferring the environment's statistical structure and adapting behavior accordingly is a fundamental...
The deployment of visuospatial attention and the programming of saccades are governed by the inferre...
Inferring the environment's statistical structure and adapting behavior accordingly is a fundamental...
The human brain effortlessly solves problems that still pose a challenge for modern computers, such ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
David Marr famously defined vision as "knowing what is where by seeing". In the framework described ...
Attention acts, through cortical feedback pathways, to enhance the response of cells encoding expect...
AbstractWe describe a model of invariant visual object recognition in the brain that incorporates fe...
AbstractScrutiny of the numerous physiology and imaging studies of visual attention reveal that inte...
Perception is often characterized as an inference process in which the brain unconsciously reasons a...