There are two aspects to unsupervised learning of invariant representations of images: First, we can reduce the dimensionality of the representation by finding an optimal trade-off between temporal stability and informativeness. We show that the answer to this optimization problem is generally not unique so that there is still considerable freedom in choosing a suitable basis. Which of the many optimal representations should be selected? Here, we focus on this second aspect, and seek to find representations that are invariant under geometrical transformations occuring in sequences of natural images. We utilize ideas of steerability and Lie groups, which have been developed in the context of filter design. In particular, we show how an ant...
This paper presents a novel learning algorithm that nds the linear combination of one set of multi-d...
This report describes an idea based on the work in [1], where an algorithm for learning automatic re...
International audienceOver the last years, deep convolutional neural networks (ConvNets) have transf...
There are two aspects to unsupervised learning of invariant representations of images: First, we can...
The present phase of Machine Learning is characterized by supervised learning algorithms relying on ...
One of the most important problems in visual perception is that of visual in-variance: how are objec...
A means for establishing transformation-invariant representations of objects is proposed and analyze...
This paper presents a novel learning algorithm that finds the linear combination of one set of multi...
In many vision problems, rotation-invariant analysis is necessary or preferred. Popular solutions ar...
A means for establishing transformation-invariant representations of ob-jects is proposed and analyz...
This report describes an idea based on the work in [1], where an algorithm for learning automatic re...
The aggressive resurgence of convolutional neural network (CNN) models for prediction has led to new...
We study unsupervised learning of occluding objects in images of visual scenes. The derived learning...
Identifying suitable image features is a central challenge in computer vision, ranging from represen...
A major paradigm for learning image representations in a self-supervised manner is to learn a model ...
This paper presents a novel learning algorithm that nds the linear combination of one set of multi-d...
This report describes an idea based on the work in [1], where an algorithm for learning automatic re...
International audienceOver the last years, deep convolutional neural networks (ConvNets) have transf...
There are two aspects to unsupervised learning of invariant representations of images: First, we can...
The present phase of Machine Learning is characterized by supervised learning algorithms relying on ...
One of the most important problems in visual perception is that of visual in-variance: how are objec...
A means for establishing transformation-invariant representations of objects is proposed and analyze...
This paper presents a novel learning algorithm that finds the linear combination of one set of multi...
In many vision problems, rotation-invariant analysis is necessary or preferred. Popular solutions ar...
A means for establishing transformation-invariant representations of ob-jects is proposed and analyz...
This report describes an idea based on the work in [1], where an algorithm for learning automatic re...
The aggressive resurgence of convolutional neural network (CNN) models for prediction has led to new...
We study unsupervised learning of occluding objects in images of visual scenes. The derived learning...
Identifying suitable image features is a central challenge in computer vision, ranging from represen...
A major paradigm for learning image representations in a self-supervised manner is to learn a model ...
This paper presents a novel learning algorithm that nds the linear combination of one set of multi-d...
This report describes an idea based on the work in [1], where an algorithm for learning automatic re...
International audienceOver the last years, deep convolutional neural networks (ConvNets) have transf...