In this paper, we consider the Précis problem of sampling K representative yet diverse data points from a large dataset. This problem arises frequently in ap-plications such as video and document summarization, exploratory data analysis, and pre-filtering. We formulate a general theory which encompasses not just tra-ditional techniques devised for vector spaces, but also non-Euclidean manifolds, thereby enabling these techniques to shapes, human activities, textures and many other image and video based datasets. We propose intrinsic manifold measures for measuring the quality of a selection of points with respect to their representative power, and their diversity. We then propose efficient algorithms to optimize the cost function using a n...
International audienceWe describe a new methodology for constructing probability measures from obser...
It is a well-established fact that the witness complex is closely related to the restricted Delaunay...
A natural representation of data are the parameters which generated the data. If the parameter space...
Figure 1: From left to right: The original model with 14 million samples is adaptively subsampled to...
High computational costs of manifold learning prohibit its application for large datasets. A common ...
A central problem in computer graphics is finding optimal sam-pling conditions for a given surface r...
It is one of the main goals of Computer Graphics in particular, and science in general, to understan...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...
Dimensionality reduction and manifold learning techniques are used in numerous disciplines to find l...
Manifold learning methods are promising data analysis tools. However, if we locate a new test sample...
Abstract: We develop algorithms for sampling from a probability distribution on a sub-manifold embed...
A new algorithm for manifold reconstruction is presented. The goal is to take samples drawn from a f...
We present an algorithm to "reconstruct" a smooth k-dimensional manifold M embedded in an Euclidean ...
International audienceWe describe a new methodology for constructing probability measures from obser...
It is a well-established fact that the witness complex is closely related to the restricted Delaunay...
A natural representation of data are the parameters which generated the data. If the parameter space...
Figure 1: From left to right: The original model with 14 million samples is adaptively subsampled to...
High computational costs of manifold learning prohibit its application for large datasets. A common ...
A central problem in computer graphics is finding optimal sam-pling conditions for a given surface r...
It is one of the main goals of Computer Graphics in particular, and science in general, to understan...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...
Dimensionality reduction and manifold learning techniques are used in numerous disciplines to find l...
Manifold learning methods are promising data analysis tools. However, if we locate a new test sample...
Abstract: We develop algorithms for sampling from a probability distribution on a sub-manifold embed...
A new algorithm for manifold reconstruction is presented. The goal is to take samples drawn from a f...
We present an algorithm to "reconstruct" a smooth k-dimensional manifold M embedded in an Euclidean ...
International audienceWe describe a new methodology for constructing probability measures from obser...
It is a well-established fact that the witness complex is closely related to the restricted Delaunay...
A natural representation of data are the parameters which generated the data. If the parameter space...