Distributed non-convex ADMM-based inference in large-scale random fields
We propose a parallel and distributed algorithm for solving discrete labeling problems in large scale random fields. Our approach is motivated by the following observations: i) very large scale image and video processing problems, such as labeling dozens of million pixels with thousands of labels, a...
主要な著者: | Miksik, O, Vineet, V, Pérez, P, Torr, PHS |
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フォーマット: | Conference item |
言語: | English |
出版事項: |
British Machine Vision Association
2014
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