2009 IEEE Conference on Computer Vision and Pattern Recognition P-brush: Continuous valued MRFs with normed pairwise distributions for image segmentation Miami, FL, USA June 20-June 25 ISBN: 978-1-4244-3992-8
Interactive image segmentation traditionally involves the use of algorithms such as graph cuts or random walker. Common concerns with using graph cuts are metrication artifacts (blockiness) and the shrinking bias (bias towards shorter boundaries). The random walker avoids these problems, but suffers from the proximity bias (sensitivity to location of pixels labeled by the user). In this work, we introduce a new family of segmentation algorithms that includes graph cuts and random walker as special cases. We explore image segmentation using continuous-valued Markov random fields (MRFs) with probability distributions following the p-norm of the difference between configurations of neighboring sites. For p=1 these MRFs may be interpreted as the standard binary MRF used by graph cuts, while for p=2 these MRFs may be viewed as Gaussian MRFs employed by the random walker algorithm. By allowing the probability distribution for neighboring sites to take any arbitrary p-norm (p ges 1), we pave the path for hybrid extensions of these algorithms. Experiments show that the use of a fractional p (1 < p < 2) can be used to resolve the aforementioned drawbacks of these algorithms.
Index Terms:
Gaussian process, continuous valued MRF, normed pairwise distribution, interactive image segmentation, P-Brush, graph cut, random walker, metrication artifact, shrinking bias, proximity bias, Markov random field, probability distribution
Citation:
D. Singaraju, L. Grady, R. Vidal, "P-brush: Continuous valued MRFs with normed pairwise distributions for image segmentation," cvpr, pp.1303-1310, 2009 IEEE Conference on Computer Vision and Pattern Recognition, 2009 Usage of this product signifies your acceptance of the Terms of Use. | |||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||