We address the problem of building a manifold in order to represent a set of geometrically transformed images by selecting a good common sparse approximation of them with parametric atoms. We propose a greedy method to construct a representative pattern such that the total distance between the transformation manifold of the representative pattern and the input images is minimized. In the progressive construction of the pattern we select atoms from a continuous dictionary by optimizing the atom parameters. Experimental results suggest that the representative pattern built with the proposed method provides an accurate representation of data, where the invariance to geometric transformations is achieved due to the transformation manifold model
Abstract — A powerful approach to sparse representation, dic-tionary learning consists in finding a ...
Signal and image processing have seen in the last few years an explosion of interest in a new form o...
Recent advances in computer vision and machine learning suggest that a wide range of problems can be...
Abstract—Manifold models provide low-dimensional represen-tations that are useful for processing and...
Manifold models provide low-dimensional representations that are useful for analyzing and classifyin...
Sparse representations of images in well-designed dictionaries can be used for effective classificat...
Abstract—Transformation-invariant analysis of signals often requires the computation of the distance...
This dissertation presents three contributions on unsupervised learning. First, I describe a signal ...
This paper introduces a new dictionary learning strategy based on atoms obtained by translating the ...
The characterization of signals and images in manifolds often lead to efficient dimensionality reduc...
The analysis of collections of visual data, e.g., their classification, modeling and clustering, has...
In this paper we address the problem of learning image structures directly from sparse codes. We fir...
Discovering the intrinsic low-dimensional structure from high-dimensional observation space (e.g., i...
Projecte realitzat mitjançant programa de mobilitat. ÉCOLE POLYTECHNIQUE FÉDÉRALE DE LAUSANNE (EPFL)...
<p>Subspaces and manifolds are two powerful models for high dimensional signals. Subspaces model lin...
Abstract — A powerful approach to sparse representation, dic-tionary learning consists in finding a ...
Signal and image processing have seen in the last few years an explosion of interest in a new form o...
Recent advances in computer vision and machine learning suggest that a wide range of problems can be...
Abstract—Manifold models provide low-dimensional represen-tations that are useful for processing and...
Manifold models provide low-dimensional representations that are useful for analyzing and classifyin...
Sparse representations of images in well-designed dictionaries can be used for effective classificat...
Abstract—Transformation-invariant analysis of signals often requires the computation of the distance...
This dissertation presents three contributions on unsupervised learning. First, I describe a signal ...
This paper introduces a new dictionary learning strategy based on atoms obtained by translating the ...
The characterization of signals and images in manifolds often lead to efficient dimensionality reduc...
The analysis of collections of visual data, e.g., their classification, modeling and clustering, has...
In this paper we address the problem of learning image structures directly from sparse codes. We fir...
Discovering the intrinsic low-dimensional structure from high-dimensional observation space (e.g., i...
Projecte realitzat mitjançant programa de mobilitat. ÉCOLE POLYTECHNIQUE FÉDÉRALE DE LAUSANNE (EPFL)...
<p>Subspaces and manifolds are two powerful models for high dimensional signals. Subspaces model lin...
Abstract — A powerful approach to sparse representation, dic-tionary learning consists in finding a ...
Signal and image processing have seen in the last few years an explosion of interest in a new form o...
Recent advances in computer vision and machine learning suggest that a wide range of problems can be...