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Inference Methods for CRFs with Co-occurrence Statistics

机译:具有共现统计的CRF推断方法

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The Markov and Conditional random fields (CRFs) used in computer vision typically model only local interactions between variables, as this is generally thought to be the only case that is computationally tractable. In this paper we consider a class of global potentials defined over all variables in the CRF. We show how they can be readily optimised using standard graph cut algorithms at little extra expense compared to a standard pairwise field. This result can be directly used for the problem of class based image segmentation which has seen increasing recent interest within computer vision. Here the aim is to assign a label to each pixel of a given image from a set of possible object classes. Typically these methods use random fields to model local interactions between pixels or super-pixels. One of the cues that helps recognition is global object co-occurrence statistics, a measure of which classes (such as chair or motorbike) are likely to occur in the same image together. There have been several approaches proposed to exploit this property, but all of them suffer from different limitations and typically carry a high computational cost, preventing their application on large images. We find that the new model we propose produces a significant improvement in the labelling compared to just using a pairwise model and that this improvement increases as the number of labels increases.
机译:计算机视觉中使用的马尔可夫和条件随机场(CRF)通常仅对变量之间的局部交互进行建模,因为通常认为这是唯一在计算上易于处理的情况。在本文中,我们考虑了在CRF中所有变量上定义的一类全局势。与标准的成对字段相比,我们展示了如何使用标准的图割算法轻松地优化它们,而无需花费额外的费用。该结果可以直接用于基于类别的图像分割问题,该问题最近在计算机视觉中引起了越来越多的关注。这里的目的是为一组可能的对象类别中的给定图像的每个像素分配一个标签。通常,这些方法使用随机字段来建模像素或超像素之间的局部交互。有助于识别的线索之一是全局对象共现统计,这是对同一图像中可能同时出现哪些类别(例如椅子或摩托车)的一种度量。已经提出了几种利用该特性的方法,但是所有这些方法都有不同的局限性,并且通常携带很高的计算成本,从而阻止了它们在大图像上的应用。我们发现,与仅使用成对模型相比,我们提出的新模型在标记方面产生了显着改善,并且随着标记数量的增加,这种改善也随之增加。

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