Connecting non-quadratic variational models and MRFs

Kevin Schelten, S. Roth
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引用次数: 2

Abstract

Spatially-discrete Markov random fields (MRFs) and spatially-continuous variational approaches are ubiquitous in low-level vision, including image restoration, segmentation, optical flow, and stereo. Even though both families of approaches are fairly similar on an intuitive level, they are frequently seen as being technically rather distinct since they operate on different domains. In this paper we explore their connections and develop a direct, rigorous link with a particular emphasis on first-order regularizers. By representing spatially-continuous functions as linear combinations of finite elements with local support and performing explicit integration of the variational objective, we derive MRF potentials that make the resulting MRF energy equivalent to the variational energy functional. In contrast to previous attempts, we provide an explicit connection for modern non-quadratic regularizers and also integrate the data term. The established connection opens certain classes of MRFs to spatially-continuous interpretations and variational formulations to a broad range of probabilistic learning and inference algorithms.
连接非二次变分模型和mrf
空间离散马尔可夫随机场(mrf)和空间连续变分方法在低水平视觉中无处不在,包括图像恢复、分割、光流和立体视觉。尽管这两种方法在直观层面上非常相似,但由于它们在不同的领域操作,因此它们在技术上经常被视为相当不同。在本文中,我们探索了它们之间的联系,并发展了一个直接的、严格的联系,特别强调了一阶正则子。通过将空间连续函数表示为具有局部支持的有限元的线性组合,并对变分目标进行显式积分,我们推导出MRF势,使所得MRF能量等效于变分能量泛函。与以前的尝试相反,我们为现代非二次正则器提供了显式连接,并且还集成了数据项。建立的联系打开了某些类别的mrf的空间连续解释和变分公式,以广泛的概率学习和推理算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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