Authors
Yuri Boykov, Olga Veksler, Ramin Zabih
Publication date
2001/11
Journal
IEEE Transactions on pattern analysis and machine intelligence
Volume
23
Issue
11
Pages
1222-1239
Publisher
IEEE
Description
Many tasks in computer vision involve assigning a label (such as disparity) to every pixel. A common constraint is that the labels should vary smoothly almost everywhere while preserving sharp discontinuities that may exist, e.g., at object boundaries. These tasks are naturally stated in terms of energy minimization. The authors consider a wide class of energies with various smoothness constraints. Global minimization of these energy functions is NP-hard even in the simplest discontinuity-preserving case. Therefore, our focus is on efficient approximation algorithms. We present two algorithms based on graph cuts that efficiently find a local minimum with respect to two types of large moves, namely expansion moves and swap moves. These moves can simultaneously change the labels of arbitrarily large sets of pixels. In contrast, many standard algorithms (including simulated annealing) use small moves where only …
Total citations
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Scholar articles
Y Boykov, O Veksler, R Zabih - IEEE Transactions on pattern analysis and machine …, 2001