The analysis of collections of visual data, e.g., their classification, modeling and clustering, has become a problem of high importance in a variety of applications. Meanwhile, image data captured in uncontrolled environments by arbitrary users is very likely to be exposed to geometric transformations. Therefore, efficient methods are needed for analyzing high-dimensional visual data sets that can cope with geometric transformations of the visual content of interest. In this thesis, we study parametric models for transformation-invariant analysis of geometrically transformed image data, which provide low-dimensional image representations that capture relevant information efficiently. We focus on transformation manifolds, which are image se...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
Invariance to geometric transformations is a highly desirable property of automatic classifiers in m...
The field of manifold learning provides powerful tools for parameterizing high-dimensional data poin...
Abstract—Transformation-invariant analysis of signals often requires the computation of the distance...
Manifold models provide low-dimensional representations that are useful for analyzing and classifyin...
According to the manifold hypothesis, natural variations in high-dimensional data lie on or near a l...
Abstract—Manifold models provide low-dimensional represen-tations that are useful for processing and...
Transformation manifolds are quite attractive for image analysis applications that require transform...
The field of computer vision has recently witnessed remarkable progress, due mainly to visual data a...
Over the past few decades we have been experiencing a data explosion; massive amounts of data are in...
Advances in scientific instrumentation technology have increased the speed of data acquisition and t...
The characterization of signals and images in manifolds often lead to efficient dimensionality reduc...
Abstract—In this paper, we examine image and video-based recognition applications where the underlyi...
We address the problem of building a manifold in order to represent a set of geometrically transform...
Despite the promise of low-dimensional manifold models for image processing, computer vision, and ma...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
Invariance to geometric transformations is a highly desirable property of automatic classifiers in m...
The field of manifold learning provides powerful tools for parameterizing high-dimensional data poin...
Abstract—Transformation-invariant analysis of signals often requires the computation of the distance...
Manifold models provide low-dimensional representations that are useful for analyzing and classifyin...
According to the manifold hypothesis, natural variations in high-dimensional data lie on or near a l...
Abstract—Manifold models provide low-dimensional represen-tations that are useful for processing and...
Transformation manifolds are quite attractive for image analysis applications that require transform...
The field of computer vision has recently witnessed remarkable progress, due mainly to visual data a...
Over the past few decades we have been experiencing a data explosion; massive amounts of data are in...
Advances in scientific instrumentation technology have increased the speed of data acquisition and t...
The characterization of signals and images in manifolds often lead to efficient dimensionality reduc...
Abstract—In this paper, we examine image and video-based recognition applications where the underlyi...
We address the problem of building a manifold in order to represent a set of geometrically transform...
Despite the promise of low-dimensional manifold models for image processing, computer vision, and ma...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
Invariance to geometric transformations is a highly desirable property of automatic classifiers in m...
The field of manifold learning provides powerful tools for parameterizing high-dimensional data poin...