A knowledge-based graphic description tool for understanding engineering drawings

Yong-Qing Cheng, Jing-Yu Yang
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引用次数: 4

Abstract

A knowledge-based graphic description tool (KGDT) that is used to recognize and understand engineering drawings is described. This tool basically consists of a concept description network, a graphic description language, a physical description framework, a set of image processing modules, a matcher, a rule-based inference engine, an interpreter, and a blackboard control architecture. The matcher recognizes all graphic symbols and characters in the engineering drawing based on the various properties of the different graphic symbols and characters that are extracted by the low-level image processing routines. The rule-based inference engine is built to infer possible relations among graphic symbols and generate a relational graph. The interpreter is used to generate an acceptable explanation in terms of traversal of the relational graph. The interactions among the interpreter, the matcher, the inference engine, and the image processing routines are controlled by the blackboard control architecture.<>
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用于理解工程图纸的基于知识的图形描述工具
介绍了一种用于识别和理解工程图纸的基于知识的图形描述工具(KGDT)。该工具主要由一个概念描述网络、一个图形描述语言、一个物理描述框架、一组图像处理模块、一个匹配器、一个基于规则的推理引擎、一个解释器和一个黑板控制架构组成。该匹配器基于底层图像处理程序提取的不同图形符号和字符的不同属性,对工程图中的所有图形符号和字符进行识别。建立基于规则的推理引擎,对图形符号之间可能存在的关系进行推理,生成关系图。解释器用于根据关系图的遍历生成可接受的解释。解释器、匹配器、推理引擎和图像处理例程之间的交互由黑板控制体系结构控制。
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