Random Graph Languages for Distorted and Ambiguous Patterns: Single Layer Model

M. Ogiela, M. Piekarczyk
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引用次数: 7

Abstract

The work introduces a linguistic based model designed for distorted or ambiguous patterns where a graph based approach is used for structure representation. The knowledge about unevenness is usually created on the basis of finite number of patterns treated as positive samples of unknown language. The IE graphs are used as the base. Single pattern can be represented using deterministic IE graph. Subsequently, the collection of patterns, represented by deterministic graph is transformed into equivalent random graph language. Utilization of the grammatical inference mechanisms gives the possibility to perform this process in automatic way. Using the IE graphs and imposing some simple limitations on graph structures allows to obtain a polynomial complexity of knowledge inference. In the work it is described how to use the proposed model for collecting the knowledge in handwritten signatures recognition and analysis systems. Information about graphemes (solid fragment of handwritten signature) variability is stored in the form of random IE graphs and stochastic ETPL(k) graph grammars. Instead of an ordinary the IE graph, an attributed one is used in order to increase a descriptive power of the proposed schema. The parametrical data embedded in the graph carries some additional semantic information associated with the structure of pattern. The work presents discussion about inference scheme and computational complexity of the proposed linguistic representation scheme. Described methodology can be especially suited for creating the knowledge representation of the handwritten signatures, signs and ideograms (e.g. kanji) in offline recognition systems.
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用于扭曲和模糊模式的随机图语言:单层模型
该工作介绍了一种基于语言的模型,用于扭曲或模糊的模式,其中基于图的方法用于结构表示。关于不均匀性的知识通常是建立在有限数量的模式的基础上,这些模式被视为未知语言的正样本。IE图形被用作基础。单一模式可以用确定性IE图表示。然后,将以确定性图表示的模式集合转换为等效的随机图语言。语法推理机制的使用为自动完成这一过程提供了可能。使用IE图并对图结构施加一些简单的限制,可以获得多项式复杂度的知识推理。在工作中,描述了如何使用所提出的模型来收集手写签名识别和分析系统中的知识。关于字素(手写签名的实体片段)可变性的信息以随机IE图和随机ETPL(k)图语法的形式存储。与普通的IE图不同,我们使用了带有属性的IE图,以增强所建议模式的描述能力。嵌入图中的参数数据携带了一些与模式结构相关的附加语义信息。本文讨论了所提出的语言表示方案的推理方案和计算复杂度。所描述的方法特别适合于在离线识别系统中创建手写签名、符号和表意文字(如汉字)的知识表示。
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