Unsupervised smooth contour detection

 

Autor(es):
Grompone von Gioi, Rafael ; Randall, Gregory
Tipo:
Artículo
Versión:
Publicado
Resumen:

An unsupervised method for detecting smooth contours in digital images is proposed. Following the a contrario approach, the starting point is dening the conditions where contours should not be detected: soft gradient regions contaminated by noise. To achieve this, low frequencies are removed from the input image. Then, contours are validated as the frontiers separating two adjacent regions, one with signicantly larger values than the other. Signicance is evalu-ted using the Mann-Whitney U test to determine whether the samples were drawn from the same distribution or not. This test makes no assumption on the distributions. The resulting algorithm is similar to the classic Marr-Hildreth edge detector, with the addition of the statistical validation step. Combined with heuristics based on the Canny and Devernay methods, an efficient algorithm is derived producing sub-pixel contours.

Año:
2016
Idioma:
Inglés
Temas:
Unsupervised
Contour detection
Sub-pixel accuracy
NFA
Mann- Whitney U test
Multiple hypothesis testing
Institución:
Universidad de la República
Repositorio:
COLIBRI
Enlace(s):
http://hdl.handle.net/20.500.12008/8903
Nivel de acceso:
Acceso abierto