Leaf Segmentation and Tracking Using Probabilistic Parametric Active Contours
Jonas De Vylder, Daniel Ochoa, Wilfried Philips, Laury Chaerle, Dominique Van Der Straeten
MIRAGE 2011: Computer Vision/Computer Graphics Collaboration Techniques, October 2011, pp. 75--85.
Abstract: Active contours or snakes are widely used for segmentation and tracking. These techniques require the minimization of an energy function, which is generally a linear combination of a data fit term and a regularization term. This energy function can be adjusted to exploit the intrinsic object and image features. This can be done by changing the weighting parameters of the data fit and regularization term. There is, however, no rule to set these parameters optimally for a given application. This results in trial and error parameter estimation. In this paper, we propose a new active contour framework defined using probability theory. With this new technique there is no need for ad hoc parameter setting, since it uses probability distributions, which can be learned from a given training dataset.
Article URL: http://dx.doi.org/10.1007/978-3-642-24136-9_7
BibTeX format:
@incollection{DeVylder:2011:LSA,
  author = {Jonas De Vylder and Daniel Ochoa and Wilfried Philips and Laury Chaerle and Dominique Van Der Straeten},
  title = {Leaf Segmentation and Tracking Using Probabilistic Parametric Active Contours},
  booktitle = {MIRAGE 2011: Computer Vision/Computer Graphics Collaboration Techniques},
  pages = {75--85},
  month = oct,
  year = {2011},
}
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