Graphic Symbol Recognition Using Auto Associative Neural Network Model

Mahesh Kumar Gellaboina, V. Venkoparao
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引用次数: 21

Abstract

Symbol recognition is a well-known problem in the field of graphics. A symbol can be defined as a structure within document that has a particular meaning in the context of the application. Due to their representational power, graph structures are usually used to represent line drawings images.An accurate vectorization constitutes a first approach to solve this goal. But vectorization only gives the segments constituting the document and their geometrical attributes.Interpreting a document such as P&ID (Process & Instrumentation)diagram requires an additional stage viz. recognition of symbols in terms of its shape. Usually a P&ID diagram contain several types of elements, symbols and structural connectivity. For those symbols that can be defined by a prototype pattern, we propose an iterative learning strategy based on Hopfield model to learn the symbols, for subsequent recognition in the P&ID diagram. In a typical shape recognition problem one has to account for transformation invariance. Here the transformation invariance is circumvented by using an iterative learning approach which can learn symbols with high degree of correlation.
基于自动关联神经网络模型的图形符号识别
符号识别是图形学领域中一个众所周知的问题。符号可以定义为在应用程序上下文中具有特定含义的文档中的结构。由于其代表性,图形结构通常用于表示线条图图像。精确的矢量化是解决这一问题的第一种方法。但矢量化只给出构成文档的部分及其几何属性。解释像P&ID(过程和仪表)图这样的文档需要一个额外的阶段,即根据其形状识别符号。通常,P&ID图包含几种类型的元素、符号和结构连接性。对于那些可以被原型模式定义的符号,我们提出了一种基于Hopfield模型的迭代学习策略来学习符号,以便在P&ID图中进行后续识别。在典型的形状识别问题中,必须考虑变换不变性。这里通过使用迭代学习方法来避免变换不变性,迭代学习方法可以学习高度相关的符号。
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