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Incorporating higher-order point distribution model priors into MRFs using convex quadratic programming

机译:使用凸二次规划将高阶点分布模型先验合并到MRF中

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摘要

Recently, with the advent of powerful optimisation algorithms for Markov random fields (MRFs), priors of high arity (more than two) have been put into practice more widely. The statistical relationship between object parts encoding shape in a covariant space, also known as the point distribution model (PDM), is a widely employed technique in computer vision which has been largely overlooked in the context of higher-order MRF models. This paper focuses on such higher-order statistical shape priors and illustrates that in a spatial transformation invariant space, these models can be formulated as convex quadratic programmes. As such, the associated energy of a PDM may be optimised efficiently using a variety of different dedicated algorithms. Moreover, it is shown that such an approach in the context of graph matching can be utilised to incorporate both a global rigid and a non-rigid deformation prior into the problem in a parametric form, a problem which has been rarely addressed in the literature. The paper then illustrates an application of PDM priors for different tasks using graphical models incorporating factors of different cardinalities.
机译:近来,随着针对马尔可夫随机场(MRF)的强大优化算法的出现,高Ar(两个以上)先验先验已被更广泛地实践。在协变空间中编码形状的对象部分之间的统计关系,也称为点分布模型(PDM),是计算机视觉中广泛使用的技术,在高阶MRF模型的上下文中已被大大忽略。本文着重于此类高阶统计形状先验,并说明了在空间变换不变空间中,这些模型可以表述为凸二次规划。这样,可以使用各种不同的专用算法来有效地优化PDM的相关能量。此外,已经表明,在图形匹配的情况下,这种方法可以用于以参数形式将整体刚性变形和非刚性变形两者合并到问题中,该问题在文献中很少解决。然后,本文使用结合了不同基数因素的图形模型,说明了PDM先验在不同任务中的应用。

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