Title :
A new heuristic edge extraction technique
Author_Institution :
NYNEX Corporation, White Plains, New York
Abstract :
The problem of detecting intensity changes within images is canonical in computer vision. This research paper presents a new heuristic edge extraction (HEE) technique for solving the problem. The HEE consists of the following processes: (1) preprocessing, (2) Sobel edge detection, (3) thinning edge operation, (4) AI A* algorithm (minimum-cost-searching scheme), and (5) chain coding. The preprocessing improves image quality to facilitate edge extraction. Sobel edge detection is used for obtaining the spatially accurate multipixel-wide edges within input images. The thining edge operation yields one-pixel-wide edges by processing the Sobel edges. AI A* algorithm extracts optimal curve edge segments based on the use of both thinned edge intensity and Sobel edge direction (i.e. gradient direction). Finally, the chain coding technique is applied to encode extracted optimal curve edge segments. The HEE provides, therefore, spatially accurate, high-quality, and exactly one-pixel-wide edges as system output.
Keywords :
Artificial intelligence; Computer vision; Data mining; Data preprocessing; Image coding; Image edge detection; Image enhancement; Image quality; Image segmentation; Laboratories;
Conference_Titel :
Acoustics, Speech, and Signal Processing, IEEE International Conference on ICASSP '87.
DOI :
10.1109/ICASSP.1987.1169684