Perceptual experiments indicate that corners and curvature are very important features in the process of recognition. This paper presents a new method to detect rotational symmetries, which describes complex curvature such as corners, circles, star, and spiral patterns. It works in two steps; first extract local orientation from a gray-scale or color image, second apply normalized convolution on the orientation image with rotational symmetry filters as basis functions. These symmetries can serve as feature points at a high ion level for use in hierarchical matching structures for 3D estimation, object recognition, image database retrieval etc.
Björn Johansson, Gösta H. Granlund, Hans