Title of article :
A Riemannian Framework for Tensor Computing
Author/Authors :
Xavier Pennec، نويسنده , , PIERRE FILLARD AND NICHOLAS AYACHE، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
Tensors are nowadays a common source of geometric information. In this paper, we propose to endow
the tensor space with an affine-invariant Riemannian metric. We demonstrate that it leads to strong theoretical
properties: the cone of positive definite symmetric matrices is replaced by a regular and complete manifold without
boundaries (null eigenvalues are at the infinity), the geodesic between two tensors and the mean of a set of tensors
are uniquely defined, etc.
We have previously shown that the Riemannian metric provides a powerful framework for generalizing statistics
to manifolds. In this paper, we show that it is also possible to generalize to tensor fields many important geometric
data processing algorithms such as interpolation, filtering, diffusion and restoration of missing data. For
instance, most interpolation and Gaussian filtering schemes can be tackled efficiently through a weighted mean
computation. Linear and anisotropic diffusion schemes can be adapted to our Riemannian framework, through
partial differential evolution equations, provided that the metric of the tensor space is taken into account. For
that purpose, we provide intrinsic numerical schemes to compute the gradient and Laplace-Beltrami operators.
Finally, to enforce the fidelity to the data (either sparsely distributed tensors or complete tensors fields) we propose
least-squares criteria based on our invariant Riemannian distance which are particularly simple and efficient to
solve.
Keywords :
Diffusion tensor MRI , Extrapolation , interpolation , regularization , affine-invariant metric. , PDE , Riemannian manifold , tensors
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION