113 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.In this dissertation, we show the power of multilinear models in recognition, mining, synthesis, and estimation (RMSE) for large-scale tensor visual data in computer vision and graphics. We develop novel algorithms based on multilinear models to efficiently explore the relationship of multiple factors within the data and investigate some challenging applications in object recognition, video mining, image-based rendering, and 3D scene modeling. In object recognition, we present a general framework for dimensionality reduction using Datum-as-Is representation. Our approach works directly on the multi-dimensional form of the data (matrix in 2D and tensor in higher dimension...
Tensor representation is helpful to reduce the small sample size problem in discriminative subspace ...
Tensor decomposition methods and multilinear algebra are powerful tools to cope with challenges arou...
This paper proposes a novel tensor based dimensionality reduction algorithm called Multilinear Isome...
This thesis introduces a multilinear algebraic framework for computer graphics, computer vision, and...
With the increasing demands for photo-realistic image synthesis in real time, we propose a sparse mu...
High-dimensional tensor models are notoriously computationally expensive to train. We present a meta...
Tensor approximation is necessary to obtain compact multilinear models for multi-dimensional visual ...
Most visual computing domains are witnessing a steady growth in sheer data set size, complexity, and...
Tensor approximation is necessary to obtain compact multilinear models for multi-dimensional visual ...
Abstract—Principal Components Analysis (PCA) has tradition-ally been utilized with data expressed in...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
In recent years, massive data sets are generated in many areas of science and business, and are gath...
Tensor completion is an important topic in the area of image processing and computer vision research...
Tensor decomposition methods and multilinear algebra are powerful tools to cope with challenges arou...
Tensor representation is helpful to reduce the small sample size problem in discriminative subspace ...
Tensor decomposition methods and multilinear algebra are powerful tools to cope with challenges arou...
This paper proposes a novel tensor based dimensionality reduction algorithm called Multilinear Isome...
This thesis introduces a multilinear algebraic framework for computer graphics, computer vision, and...
With the increasing demands for photo-realistic image synthesis in real time, we propose a sparse mu...
High-dimensional tensor models are notoriously computationally expensive to train. We present a meta...
Tensor approximation is necessary to obtain compact multilinear models for multi-dimensional visual ...
Most visual computing domains are witnessing a steady growth in sheer data set size, complexity, and...
Tensor approximation is necessary to obtain compact multilinear models for multi-dimensional visual ...
Abstract—Principal Components Analysis (PCA) has tradition-ally been utilized with data expressed in...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
In recent years, massive data sets are generated in many areas of science and business, and are gath...
Tensor completion is an important topic in the area of image processing and computer vision research...
Tensor decomposition methods and multilinear algebra are powerful tools to cope with challenges arou...
Tensor representation is helpful to reduce the small sample size problem in discriminative subspace ...
Tensor decomposition methods and multilinear algebra are powerful tools to cope with challenges arou...
This paper proposes a novel tensor based dimensionality reduction algorithm called Multilinear Isome...