Parallel Implementation of Elastic Grid Matching Using Cellular Neural Networks
Krzysztof S&Sgrave;lot, Piotr Korbel, Hyongsuk Kim, Malrey Lee, Suhong Ko
MIRAGE 2007: Computer Vision/Computer Graphics Collaboration Techniques, March 2007, pp. 472--481.
Abstract: The following paper presents a method that allows for a parallel implementation of the most computationally expensive element of the deformable template paradigm, which is a grid-matching procedure. Cellular Neural Network Universal Machine has been selected as a framework for the task realization. A basic idea of deformable grid matching is to guide node location updates in a way that minimizes dissimilarity between an image and grid-recorded information, and that ensures minimum grid deformations. The proposed method provides a parallel implementation of this general concept and includes a novel approach to grid's elasticity modeling. The method has been experimentally verified using two different analog hardware environments, yielding high execution speeds and satisfactory processing accuracy.
Article URL: http://dx.doi.org/10.1007/978-3-540-71457-6_43
BibTeX format:
@incollection{Slot:2007:PIO,
  author = {Krzysztof S&Sgrave;lot and Piotr Korbel and Hyongsuk Kim and Malrey Lee and Suhong Ko},
  title = {Parallel Implementation of Elastic Grid Matching Using Cellular Neural Networks},
  booktitle = {MIRAGE 2007: Computer Vision/Computer Graphics Collaboration Techniques},
  pages = {472--481},
  month = mar,
  year = {2007},
}
Search for more articles by Krzysztof S&Sgrave;lot.
Search for more articles by Piotr Korbel.
Search for more articles by Hyongsuk Kim.
Search for more articles by Malrey Lee.
Search for more articles by Suhong Ko.

Return to the search page.


graphbib: Powered by "bibsql" and "SQLite3."