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基于凸投影法的图像恢复:第 1 部分理论。

Image restoration by the method of convex projections: part 1 theory.

出版信息

IEEE Trans Med Imaging. 1982;1(2):81-94. doi: 10.1109/TMI.1982.4307555.

DOI:10.1109/TMI.1982.4307555
PMID:18238261
Abstract

A projection operator onto a closed convex set in Hilbert space is one of the few examples of a nonlinear map that can be defined in simple abstract terms. Moreover, it minimizes distance and is nonexpansive, and therefore shares two of the more important properties of ordinary linear orthogonal projections onto closed linear manifolds. In this paper, we exploit the properties of these operators to develop several iterative algorithms for image restoration from partial data which permit any number of nonlinear constraints of a certain type to be subsumed automatically. Their common conceptual basis is as follows. Every known property of an original image f is envisaged as restricting it to lie in a well-defined closed convex set. Thus, m such properties place f in the intersection E(0) = E(i) of the corresponding closed convex sets E(1),E(2),...EE(m). Given only the projection operators PE(i) onto the individual E(i)'s, i = 1 --> m, we restore f by recursive means. Clearly, in this approach, the realization of the P(i)'s in a Hilbert space setting is one of the major synthesis problems. Section I describes the geometrical significance of the three main theorems in considerable detail, and most of the underlying ideas are illustrated with the aid of simple diagrams. Section II presents rules for the numerical implementation of 11 specific projection operators which are found to occur frequently in many signal-processing applications, and the Appendix contains proofs of all the major results.

摘要

在 Hilbert 空间中,投影算子作用于闭凸集中,它是少数几个可以用简单的抽象术语定义的非线性映射之一。此外,它可以最小化距离且无扩张性,因此具有普通线性正交投影到闭线性流形的两个更重要的属性。在本文中,我们利用这些算子的性质,开发了几种从部分数据进行图像恢复的迭代算法,这些算法可以自动包含任意数量的特定类型的非线性约束。它们的共同概念基础如下。将原始图像 f 的每个已知属性都视为限制其位于明确定义的闭凸集中。因此,m 个这样的属性将 f 置于相应的闭凸集 E(1)、E(2)、...EE(m)的交集 E(0) = E(i)中。仅给定到各个 E(i) 的投影算子 PE(i),i = 1 --> m,我们通过递归的方式恢复 f。显然,在这种方法中,在 Hilbert 空间设置中实现 P(i) 是主要的综合问题之一。第 I 节详细描述了三个主要定理的几何意义,并且大部分基本思想都借助于简单的图进行了说明。第 II 节介绍了 11 个具体投影算子的数值实现规则,这些算子在许多信号处理应用中经常出现,附录中包含了所有主要结果的证明。

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