V. Caselles, Illes Balears Univ., Palma De Mallorca, Spain
R. Kimmel, Illes Balears Univ., Palma De Mallorca, Spain
G. Sapiro, Illes Balears Univ., Palma De Mallorca, Spain
A novel scheme for the detection of object boundaries is presented. The technique is based on active contours deforming according to intrinsic geometric measures of the image. The evolving contours naturally split and merge, allowing the simultaneous detection of several objects and both interior and exterior boundaries. The proposed approach is based on the relation between active contours and the computation of geodesics or minimal distance curves. The minimal distance curve lays in a Riemannian space whose metric as defined by the image content. This geodesic approach for object segmentation allows to connect classical "snakes" based on energy minimization and geometric active contours based on the theory of curve evolution. Previous models of geometric active contours are improved as showed by a number of examples. Formal results concerning existence, uniqueness, stability, and correctness of the evolution are presented as well.
Index Terms:
geodesy; object detection; image segmentation; minimisation; active vision; computer vision; geodesic active contours; object boundary detection; active contour deformation; intrinsic geometric measures; image; evolving contours; object detection; exterior boundaries; interior boundaries; geodesics; minimal distance curves; Riemannian space; metric; image content; object segmentation; classical snakes; energy minimization; geometric active contours; curve evolution
Citation:
V. Caselles, R. Kimmel, G. Sapiro, "Geodesic active contours," iccv, pp.694, Fifth International Conference on Computer Vision (ICCV'95), 1995