Chatzis Sotirios P, Tsechpenakis Gabriel
Center for Computational Science, University of Miami, Miami, FL 33146, USA.
IEEE Trans Neural Netw. 2010 Jun;21(6):1004-14. doi: 10.1109/TNN.2010.2046910. Epub 2010 May 3.
Hidden Markov random field (HMRF) models are widely used for image segmentation, as they appear naturally in problems where a spatially constrained clustering scheme is asked for. A major limitation of HMRF models concerns the automatic selection of the proper number of their states, i.e., the number of region clusters derived by the image segmentation procedure. Existing methods, including likelihood- or entropy-based criteria, and reversible Markov chain Monte Carlo methods, usually tend to yield noisy model size estimates while imposing heavy computational requirements. Recently, Dirichlet process (DP, infinite) mixture models have emerged in the cornerstone of nonparametric Bayesian statistics as promising candidates for clustering applications where the number of clusters is unknown a priori; infinite mixture models based on the original DP or spatially constrained variants of it have been applied in unsupervised image segmentation applications showing promising results. Under this motivation, to resolve the aforementioned issues of HMRF models, in this paper, we introduce a nonparametric Bayesian formulation for the HMRF model, the infinite HMRF model, formulated on the basis of a joint Dirichlet process mixture (DPM) and Markov random field (MRF) construction. We derive an efficient variational Bayesian inference algorithm for the proposed model, and we experimentally demonstrate its advantages over competing methodologies.
隐马尔可夫随机场(HMRF)模型在图像分割中被广泛应用,因为它们自然地出现在需要空间约束聚类方案的问题中。HMRF模型的一个主要限制在于其状态数量的自动选择,即图像分割过程得出的区域簇数量。现有方法,包括基于似然或熵的准则以及可逆马尔可夫链蒙特卡罗方法,通常倾向于产生有噪声的模型大小估计,同时需要大量计算。最近,狄利克雷过程(DP,无限)混合模型已成为非参数贝叶斯统计的基石,作为聚类应用的有前途的候选方法,其中簇的数量先验未知;基于原始DP或其空间约束变体的无限混合模型已应用于无监督图像分割应用并显示出有前途的结果。在此动机下,为解决HMRF模型的上述问题,本文基于联合狄利克雷过程混合(DPM)和马尔可夫随机场(MRF)构建,引入了一种用于HMRF模型的非参数贝叶斯公式,即无限HMRF模型。我们为所提出的模型推导了一种有效的变分贝叶斯推理算法,并通过实验证明了其相对于竞争方法的优势。