Forbes Florence, Fort Gersende
MISTIS team, INRIA Rhône-Alpes, ZIRST, Montbonnot, 38334 Saint-Ismier Cedex, France.
IEEE Trans Image Process. 2007 Mar;16(3):824-37. doi: 10.1109/tip.2006.891045.
Issues involving missing data are typical settings where exact inference is not tractable as soon as nontrivial interactions occur between the missing variables. Approximations are required, and most of them are based either on simulation methods or on deterministic variational methods. While variational methods provide fast and reasonable approximate estimates in many scenarios, simulation methods offer more consideration of important theoretical issues such as accuracy of the approximation and convergence of the algorithms but at a much higher computational cost. In this work, we propose a new class of algorithms that combine the main features and advantages of both simulation and deterministic methods and consider applications to inference in hidden Markov random fields (HMRFs). These algorithms can be viewed as stochastic perturbations of variational expectation maximization (VEM) algorithms, which are not tractable for HMRF. We focus more specifically on one of these perturbations and we prove their (almost sure) convergence to the same limit set as the limit set of VEM. In addition, experiments on synthetic and real-world images show that the algorithm performance is very close and sometimes better than that of other existing simulation-based and variational EM-like algorithms.
一旦缺失变量之间出现非平凡的相互作用,涉及缺失数据的问题就是典型的难以进行精确推断的情况。这时就需要近似方法,其中大多数基于模拟方法或确定性变分方法。虽然变分方法在许多情况下能提供快速且合理的近似估计,但模拟方法更多地考虑了重要的理论问题,如近似的准确性和算法的收敛性,不过计算成本要高得多。在这项工作中,我们提出了一类新的算法,它结合了模拟方法和确定性方法的主要特征与优势,并考虑了在隐马尔可夫随机场(HMRF)中进行推断的应用。这些算法可以看作是变分期望最大化(VEM)算法的随机扰动,而VEM算法对于HMRF是难以处理的。我们更具体地关注其中一种扰动,并证明它们(几乎必然)收敛到与VEM的极限集相同的极限集。此外,在合成图像和真实世界图像上的实验表明,该算法的性能与其他现有的基于模拟的和类似变分期望最大化的算法非常接近,有时甚至更好。