<div><p>Following earlier studies which showed that a sparse coding principle may explain the receptive field properties of complex cells in primary visual cortex, it has been concluded that the same properties may be equally derived from a slowness principle. In contrast to this claim, we here show that slowness and sparsity drive the representations towards substantially different receptive field properties. To do so, we present complete sets of basis functions learned with <i>slow subspace analysis</i> (SSA) in case of natural movies as well as translations, rotations, and scalings of natural images. SSA directly parallels independent subspace analysis (ISA) with the only difference that SSA maximizes slowness instead of sparsity. We fin...
The developing visual system of many mammalian species is partially structured and organized even be...
Olshausen and Field (1996) developed a simple cell receptive field model for natural scene processin...
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...
Following earlier studies which showed that a sparse coding principle may explain the receptive fiel...
The appearance of objects in an image can change dramatically depending on their pose, distance, and...
In this study, we investigate temporal slowness as a learning principle for receptive fields using s...
A long standing question of biological vision research is to identify the computational goal underly...
We apply Slow Feature Analysis (SFA) to image sequences generated from natural images using a range ...
In this study, we investigate temporal slowness as a learning principle for receptive elds using sl...
In Slow Feature Analysis (SFA [1]), it has been demonstrated that high-order invariant properties c...
AbstractThe spatial receptive fields of simple cells in mammalian striate cortex have been reasonabl...
AbstractThe classical receptive fields of simple cells in the visual cortex have been shown to emerg...
Complex cells in the primary visual cortex are the first cells to exhibit geometrical invariance, na...
Slow Feature Analysis (SFA) is an efficient algorithm for learning input-output functions that extra...
The developing visual system of many mammalian species is partially structured and organized even be...
Olshausen and Field (1996) developed a simple cell receptive field model for natural scene processin...
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...
Following earlier studies which showed that a sparse coding principle may explain the receptive fiel...
The appearance of objects in an image can change dramatically depending on their pose, distance, and...
In this study, we investigate temporal slowness as a learning principle for receptive fields using s...
A long standing question of biological vision research is to identify the computational goal underly...
We apply Slow Feature Analysis (SFA) to image sequences generated from natural images using a range ...
In this study, we investigate temporal slowness as a learning principle for receptive elds using sl...
In Slow Feature Analysis (SFA [1]), it has been demonstrated that high-order invariant properties c...
AbstractThe spatial receptive fields of simple cells in mammalian striate cortex have been reasonabl...
AbstractThe classical receptive fields of simple cells in the visual cortex have been shown to emerg...
Complex cells in the primary visual cortex are the first cells to exhibit geometrical invariance, na...
Slow Feature Analysis (SFA) is an efficient algorithm for learning input-output functions that extra...
The developing visual system of many mammalian species is partially structured and organized even be...
Olshausen and Field (1996) developed a simple cell receptive field model for natural scene processin...
We develop a group-theoretical analysis of slow feature analysis for the case where the input data a...