通过网络约束分析关联图像

S. Ishikawa, Kiyoshi Kato
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引用次数: 1

摘要

描述了一种基于网络约束分析的图像关联技术。像素及其灰度值分别称为单元和标签,n个像素的集合称为单元约束集T,为记忆图像提供了单元标签约束集R。给定一个不完整的图像X,它可能有遮挡、噪声、失真等,由于X的元素约束了R中的元素,因此R被X筛选得到约简集R* (R*包含在R中),然后对R*的元素进行深度搜索,得到一致解,如果有,则为关联图像。该方法避免了记忆图像之间的干扰,这是其他联想技术所面临的问题。为了提高深度优先搜索的速度,提出了一种迭代算法。通过使用26个字母的实验证明了所提出的联想技术的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Associating an image by network constraint analysis
A technique for associating an image is described in terms of the network constraint analysis. Pixels and their gray-values are called units and labels, respectively, and a set of n pixels called the unit constraint set T provides the unit-label constraint set R for memorized images. Given an incomplete image X which can have occlusion, noise, distortion, etc., R receives screening by X to yield the reduced set R* (R* contained in R), since the elements of X constrain the elements in R. A depth first search is then applied to the elements of R* to obtain consistent solutions, if any, which are associated images. The proposed technique is free from the interference among memorized images which other association techniques suffer from. An iterative technique is also proposed for speeding up the depth first search. Performance of the proposed association technique is shown by the experiment employing 26 alphabetical letters.<>
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