MEMBER, IEEE, Courant Institute of Mathematical Sciences, New York University, New York, NY 10012.
IEEE Trans Pattern Anal Mach Intell. 1983 Mar;5(3):267-87. doi: 10.1109/tpami.1983.4767390.
A large class of problems can be formulated in terms of the assignment of labels to objects. Frequently, processes are needed which reduce ambiguity and noise, and select the best label among several possible choices. Relaxation labeling processes are just such a class of algorithms. They are based on the parallel use of local constraints between labels. This paper develops a theory to characterize the goal of relaxation labeling. The theory is founded on a definition of con-sistency in labelings, extending the notion of constraint satisfaction. In certain restricted circumstances, an explicit functional exists that can be maximized to guide the search for consistent labelings. This functional is used to derive a new relaxation labeling operator. When the restrictions are not satisfied, the theory relies on variational cal-culus. It is shown that the problem of finding consistent labelings is equivalent to solving a variational inequality. A procedure nearly identical to the relaxation operator derived under restricted circum-stances serves in the more general setting. Further, a local convergence result is established for this operator. The standard relaxation labeling formulas are shown to approximate our new operator, which leads us to conjecture that successful applications of the standard methods are explainable by the theory developed here. Observations about con-vergence and generalizations to higher order compatibility relations are described.
一类大规模的问题可以通过为对象分配标签来进行描述。通常,需要采用一些过程来减少歧义性和噪声,并从多个可能的选择中选择最佳标签。松弛标记过程就是这样一类算法。它们基于标签之间的局部约束的并行使用。本文提出了一种描述松弛标记目标的理论。该理论建立在标签一致性的定义之上,扩展了约束满足的概念。在某些受限制的情况下,存在一个可以最大化的显式函数,以指导寻找一致的标签。该函数用于推导出一种新的松弛标记运算符。当不满足限制条件时,该理论依赖于变分微积分。结果表明,寻找一致标签的问题等同于求解变分不等式。在更一般的情况下,使用与受限制情况下推导的松弛运算符几乎相同的过程。此外,还为该运算符建立了局部收敛性结果。标准松弛标记公式被证明可以近似于我们的新运算符,这使我们推测标准方法的成功应用可以通过这里提出的理论来解释。描述了收敛性和对更高阶兼容性关系的推广的观察。