In this study, we investigate temporal slowness as a learning principle for receptive fields using slow feature analysis, a new algorithm to determine functions that extract slowly varying signals from the input data. We find that the learned functions trained on image sequences develop many properties found also experimentally in complex cells of primary visual cortex, such as direction selectivity, non-orthogonal inhibition, end-inhibition and side-inhibition. Our results demonstrate that a single unsupervised learning principle can account for such a rich repertoire of receptive field properties
In Slow Feature Analysis (SFA [1]), it has been demonstrated that high-order invariant properties c...
There are two distinct classes of cells in the primary visual cortex (V1): simple cells and complex ...
© The Author(s) 2019. This article is distributed under the terms of the Creative Commons Attributio...
In this study, we investigate temporal slowness as a learning principle for receptive elds using sl...
<div><p>Following earlier studies which showed that a sparse coding principle may explain the recept...
Following earlier studies which showed that a sparse coding principle may explain the receptive fiel...
We develop a group-theoretical analysis of slow feature analysis for the case where the input data a...
Following earlier studies which showed that a sparse coding principle may explain the receptive fiel...
Slow Feature Analysis (SFA) is an efficient algorithm for learning input-output functions that extr...
The developing visual system of many mammalian species is partially structured and organized even be...
We apply Slow Feature Analysis (SFA) to image sequences generated from natural images using a range ...
The appearance of objects in an image can change dramatically depending on their pose, distance, and...
Complex cells in the primary visual cortex are the first cells to exhibit geometrical invariance, na...
In dieser Doktorarbeit untersuchen wir zeitliche Langsamkeit als Prinzip für die Selbstorganisation...
A long standing question of biological vision research is to identify the computational goal underly...
In Slow Feature Analysis (SFA [1]), it has been demonstrated that high-order invariant properties c...
There are two distinct classes of cells in the primary visual cortex (V1): simple cells and complex ...
© The Author(s) 2019. This article is distributed under the terms of the Creative Commons Attributio...
In this study, we investigate temporal slowness as a learning principle for receptive elds using sl...
<div><p>Following earlier studies which showed that a sparse coding principle may explain the recept...
Following earlier studies which showed that a sparse coding principle may explain the receptive fiel...
We develop a group-theoretical analysis of slow feature analysis for the case where the input data a...
Following earlier studies which showed that a sparse coding principle may explain the receptive fiel...
Slow Feature Analysis (SFA) is an efficient algorithm for learning input-output functions that extr...
The developing visual system of many mammalian species is partially structured and organized even be...
We apply Slow Feature Analysis (SFA) to image sequences generated from natural images using a range ...
The appearance of objects in an image can change dramatically depending on their pose, distance, and...
Complex cells in the primary visual cortex are the first cells to exhibit geometrical invariance, na...
In dieser Doktorarbeit untersuchen wir zeitliche Langsamkeit als Prinzip für die Selbstorganisation...
A long standing question of biological vision research is to identify the computational goal underly...
In Slow Feature Analysis (SFA [1]), it has been demonstrated that high-order invariant properties c...
There are two distinct classes of cells in the primary visual cortex (V1): simple cells and complex ...
© The Author(s) 2019. This article is distributed under the terms of the Creative Commons Attributio...