Title of article :
Elastic shapes models for improving segmentation of object boundaries in synthetic aperture sonar images
Author/Authors :
Kimberly D. Bryner، نويسنده , , D. and Srivastava، نويسنده , , Graeme A. and Huynh، نويسنده , , Q.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
We present a variational framework for naturally incorporating prior shape knowledge in guidance of active contours for boundary extraction in images. This framework is especially suitable for images collected outside the visible spectrum, where boundary estimation is difficult due to low contrast, low resolution, and presence of noise and clutter. Accordingly, we illustrate this approach using the segmentation of various objects in synthetic aperture sonar (SAS) images of underwater terrains. We use elastic shape analysis of planar curves in which the shapes are considered as elements of a quotient space of an infinite dimensional, non-linear Riemannian manifold. Using geodesic paths under the elastic Riemannian metric, one computes sample mean and covariances of training shapes in each classes and derives statistical models for capturing class-specific shape variability. These models are then used as shape priors in a variational setting to solve for Bayesian estimation of desired contours as follows. In traditional active contour models curves are driven towards minimum of an energy composed of image and smoothing terms. We introduce an additional shape term based on shape models of relevant shape classes. The minimization of this total energy, using iterated gradient-based updates of curves, leads to an improved segmentation of object boundaries. This is demonstrated using a number of shape classes in two large SAS image datasets.
Keywords :
Bayesian active contours , Synthetic aperture sonar , shape analysis , Riemannian geometry
Journal title :
Computer Vision and Image Understanding
Journal title :
Computer Vision and Image Understanding