Title :
Partial shape classification using contour matching in distance transformation
Author :
Liu, Hong-Chih ; Srinath, Mandyam D.
Author_Institution :
Inst. of Nucl. Energy Res., Lung-Tan, Taiwan
fDate :
11/1/1990 12:00:00 AM
Abstract :
An algorithm is presented to recognize and locate partially distorted 2D shapes without regard to their orientation, location, and size. The algorithm first calculates the curvature function from the digitized image of an object. The points of local maxima and minima extracted from the smooth curvature are used as control points to segment the boundary and to guide the boundary-matching procedure. The boundary-matching procedure considers two shapes at a time, one shape from the template databank, and the other from the object being classified. The procedure tries to match the control points in the unknown shape to those of a shape from the template databank, and estimates the translation, rotation, and scaling factors to be used to normalize the boundary of the unknown shape. The chamfer 3/4 distance transformation and a partial distance measurement scheme constitute the final step in measuring the similarity between the two shapes. The unknown shape is assigned to the class corresponding to the minimum distance. The algorithm has been successfully tested on partial shapes using two sets of data, one with sharp corners and the other with curve segments. This algorithm not only is computationally simple, but also works reasonably well in the presence of a moderate amount of noise
Keywords :
pattern recognition; picture processing; 2D shapes; boundary normalisation; boundary segmentation; boundary-matching; chamfer 3/4 distance transformation; contour matching; curvature function; curve segments; digitized image; distance transformation; local maxima; local minima; noise; partial distance measurement; partial shape classification; rotation estimation; scaling factor estimation; sharp corners; translation estimation; Algorithm design and analysis; Data mining; Distance measurement; Image edge detection; Image segmentation; Noise shaping; Senior members; Shape control; Shape measurement; Testing;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on