This paper presents a new, provably-convergent algorithm for computing the flag-mean and flag-median of a set of points on a flag manifold under the chordal metric. The flag manifold is a mathematical space consisting of flags, which are sequences of nested subspaces of a vector space that increase in dimension. The flag manifold is a superset of a wide range of known matrix spaces, including Stiefel and Grassmanians, making it a general object that is useful in a wide variety computer vision problems. To tackle the challenge of computing first order flag statistics, we first transform the problem into one that involves auxiliary variables constrained to the Stiefel manifold. The Stiefel manifold is a space of orthogonal frames, and leverag...
A FLAG in projective space Sn is a 'nest ' of subspaces, one of each dimension from 0 to n...
© 2016 IEEE. Matrix manifolds such as Stiefel and Grassmann manifolds have been widely used in moder...
Several applications in optimization, image, and signal processing deal with data belonging to matri...
The aim of the present contribution is to extend the algorithm introduced in the paper S. Fiori and ...
AbstractGiven a finite set of subspaces of Rn, perhaps of differing dimensions, we describe a flag o...
The aim of the present research work is to investigate algorithms to compute empirical averages of f...
Many computer vision algorithms employ subspace models to represent data. Many of these approaches b...
International audienceGeometric statistics aim at shifting the classical paradigm for inference from...
By interpreting the product of the Principal Component Analysis, that is the covariance matrix, as a...
The present paper elaborates on tangent-bundle maps on the Grassmann manifold, with application to s...
In this paper, we examine image and video based recognition applications where the underlying models...
International audienceThis paper investigates the generalization of Principal Component Analysis (PC...
Abstract—In this paper, we examine image and video-based recognition applications where the underlyi...
A flag area measure on a finite-dimensional euclidean vector space is a continuous translation invar...
The present research work proposes a new fast fixed-point average-value learning algorithm on the co...
A FLAG in projective space Sn is a 'nest ' of subspaces, one of each dimension from 0 to n...
© 2016 IEEE. Matrix manifolds such as Stiefel and Grassmann manifolds have been widely used in moder...
Several applications in optimization, image, and signal processing deal with data belonging to matri...
The aim of the present contribution is to extend the algorithm introduced in the paper S. Fiori and ...
AbstractGiven a finite set of subspaces of Rn, perhaps of differing dimensions, we describe a flag o...
The aim of the present research work is to investigate algorithms to compute empirical averages of f...
Many computer vision algorithms employ subspace models to represent data. Many of these approaches b...
International audienceGeometric statistics aim at shifting the classical paradigm for inference from...
By interpreting the product of the Principal Component Analysis, that is the covariance matrix, as a...
The present paper elaborates on tangent-bundle maps on the Grassmann manifold, with application to s...
In this paper, we examine image and video based recognition applications where the underlying models...
International audienceThis paper investigates the generalization of Principal Component Analysis (PC...
Abstract—In this paper, we examine image and video-based recognition applications where the underlyi...
A flag area measure on a finite-dimensional euclidean vector space is a continuous translation invar...
The present research work proposes a new fast fixed-point average-value learning algorithm on the co...
A FLAG in projective space Sn is a 'nest ' of subspaces, one of each dimension from 0 to n...
© 2016 IEEE. Matrix manifolds such as Stiefel and Grassmann manifolds have been widely used in moder...
Several applications in optimization, image, and signal processing deal with data belonging to matri...