Hierarchical constraint satisfaction for high-level dimensional inspection planning

S. Spitz, A. Requicha
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引用次数: 6

Abstract

Coordinate measuring machines (CMMs) are very precise Cartesian robots that are used for dimensional inspection. High-level inspection planning for a CMM involves spatial reasoning, to determine how to orient the part on the CMM, which probes to use, how to orient the probes, and what measurements to perform. Current planners are incomplete or only solve the problem partially. In this work, we map the inspection planning problem to a hierarchical constraint satisfaction problem (CSP). The solutions to the CSP are inspection plans of good quality. We show how to extract approximate solutions using efficient clustering methods, which do not entail search and backtracking as prevalent in other planners. We describe our implemented planner and experimental results.
高层尺寸检测规划的层次约束满足
三坐标测量机(cmm)是非常精确的笛卡尔机器人,用于尺寸检测。CMM的高级检查计划包括空间推理,以确定如何在CMM上定位零件,使用哪些探头,如何定位探头,以及执行哪些测量。目前的计划是不完整的或只解决了部分问题。在这项工作中,我们将检验计划问题映射为一个层次约束满足问题(CSP)。解决CSP问题的方法是制定高质量的检验计划。我们展示了如何使用有效的聚类方法提取近似解,这种方法不需要像其他规划器中普遍存在的那样需要搜索和回溯。我们描述了我们实现的计划和实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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