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Generalizing Swendsen-Wang to sampling arbitrary posterior probabilities
2005
IEEE Transactions on Pattern Analysis and Machine Intelligence
Many vision tasks can be formulated as graph partition problems that minimize energy functions. For such problems, the Gibbs sampler [9] provides a general solution but is very slow, while other methods, such as Ncut [24] and graph cuts [4], [22] , are computationally effective but only work for specific energy forms [17] and are not generally applicable. In this paper, we present a new inference algorithm that generalizes the Swendsen-Wang method [25] to arbitrary probabilities defined on
doi:10.1109/tpami.2005.161
pmid:16119263
fatcat:bofq6faz7jcfpkjh2rxm4jv4fe