Title :
Coping with discontinuities in computer vision: their detection, classification, and measurement
Author_Institution :
AT&T Bell Lab., Murray Hill, NJ, USA
fDate :
4/1/1990 12:00:00 AM
Abstract :
The general principles of detection, classification, and measurement of discontinuities are studied. The following issues are discussed: detecting the location of discontinuities; classifying discontinuities by their degrees; measuring the size of discontinuities; and coping with the random noise and designing optimal discontinuity detectors. An algorithm is proposed for discontinuity detection from an input signal S. For degree k discontinuity detection and measurement, a detector (P,Φ) is used, where P is the pattern and Φ is the corresponding filter. If there is a degree k discontinuity at location t0, then in the filter response there is a scaled pattern αP at t0, where α is the size of the discontinuity. This reduces the problem to searching for the scaled pattern in the filter response. A statistical method is proposed for the approximate pattern matching. To cope with the random noise, a study is made of optimal detectors, which minimize the effects of noise
Keywords :
computer vision; statistics; approximate pattern matching; classification; computer vision; detection; discontinuities; optimal discontinuity detectors; random noise; scaled pattern; statistical method; Application software; Computer vision; Detectors; Image edge detection; Layout; Nonlinear filters; Object recognition; Optical noise; Surface fitting; Surface reconstruction;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on