Title of article :
Curvature-Driven PDE Methods for Matrix-Valued Images
Author/Authors :
CHRISTIAN FEDDERN، نويسنده , , JOACHIM WEICKERT، نويسنده , , BERNHARD BURGETH AND MARTIN WELK، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
Matrix-valued data sets arise in a number of applications including diffusion tensor magnetic resonance
imaging (DT-MRI) and physical measurements of anisotropic behaviour. Consequently, there arises the need to filter
and segment such tensor fields. In order to detect edge-like structures in tensor fields, we first generalise Di Zenzo’s
concept of a structure tensor for vector-valued images to tensor-valued data. This structure tensor allows us to
extend scalar-valued mean curvature motion and self-snakes to the tensor setting.We present both two-dimensional
and three-dimensional formulations, and we prove that these filters maintain positive semidefiniteness if the initial
matrix data are positive semidefinite. We give an interpretation of tensorial mean curvature motion as a process for
which the corresponding curve evolution of each generalised level line is the gradient descent of its total length.
Moreover, we propose a geodesic active contour model for segmenting tensor fields and interpret it as a minimiser of
a suitable energy functional with a metric induced by the tensor image. Since tensorial active contours incorporate
information from all channels, they give a contour representation that is highly robust under noise. Experiments on
three-dimensional DT-MRI data and an indefinite tensor field from fluid dynamics show that the proposed methods
inherit the essential properties of their scalar-valued counterparts.
Keywords :
DT-MRI , Denoising , segmentation , edge detection , structure tensor , selfsnakes , active contours , mean curvature motion
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION