1999 | OriginalPaper | Buchkapitel
Detection of Critical Structures in Scale Space
verfasst von : Joes Staal, Stiliyan Kalitzin, Bart ter Haar Romeny, Max Viergever
Erschienen in: Scale-Space Theories in Computer Vision
Verlag: Springer Berlin Heidelberg
Enthalten in: Professional Book Archive
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In this paper we investigate scale space based structural grouping in images. Our strategy is to detect (relative) critical point sets in scale space, which we consider as an extended image representa- tion. In this way the multi-scale behavior of the original image structures is taken into account and automatic scale space grouping and scale se- lection is possible. We review a constructive and efficient topologically based method to detect the (relative) critical points. The method is pre- sented for arbitrary dimensions. Relative critical point sets in a Hessian vector frame provide us with a generalization of height ridges. Auto- matic scale selection is accomplished by a proper reparameterization of the scale axis. As the relative critical sets are in general connected sub- manifolds, it provides a robust method for perceptual grouping with only local measurements.