Title :
Scale-Based Description and Recognition of Planar Curves and Two-Dimensional Shapes
Author :
Mokhtarian, Farzin ; Mackworth, Alan
Author_Institution :
Laboratory for Computational Vision, Department of Computer Science, University of British Columbia, Vancouver, B.C., V6T 1W5, Canada.
Abstract :
The problem of finding a description, at varying levels of detail, for planar curves and matching two such descriptions is posed and solved in this paper. A number of necessary criteria are imposed on any candidate solution method. Path-based Gaussian smoothing techniques are applied to the curve to find zeros of curvature at varying levels of detail. The result is the ``generalized scale space´´ image of a planar curve which is invariant under rotation, uniform scaling and translation of the curve. These properties make the scale space image suitable for matching. The matching algorithm is a modification of the uniform cost algorithm and finds the lowest cost match of contours in the scale space images. It is argued that this is preferable to matching in a so-called stable scale of the curve because no such scale may exist for a given curve. This technique is applied to register a Landsat satellite image of the Strait of Georgia, B.C. (manually corrected for skew) to a map containing the shorelines of an overlapping area.
Keywords :
Biological cells; Computer vision; Costs; Councils; Machine vision; Registers; Remote sensing; Satellites; Shape; Smoothing methods; Cartography; computational vision; curve recognition; generalized scale space; map generalization; path-based Gaussian smoothing; remote sensing; shape description; uniform cost algorithm; zeros of curvature;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.1986.4767750