Adaptive hill climbing and iterative closest point algorithm for multisensor image registration with partial Hausdorff distance

Autor: Pierre Valin, Leandre Sevigny, Weiguang Guan, Xiangjie Yang, Yunlong Sheng
Rok vydání: 2000
Předmět:
Zdroj: SPIE Proceedings.
ISSN: 0277-786X
Popis: Challenge in the registration of battlefield images in visible and far-infrared bands is the feature inconsistency. We propose a contour-based approach for the registration and apply two free-form curve-matching algorithms: adaptive hill climbing and the iterative closest point algorithm. Both algorithms do not require explicit curve feature correspondence, are designed to be robust against outliers. We formulate the search as an adaptive hill climbing optimization for minimizing the partial Hausdorff distances. In the iterative closest point algorithm we choose the mean partial distance as the objective function, so that outliers can be easily handled by using rank order statistics.
Databáze: OpenAIRE