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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part A >Hierarchical Bayesian methods for recognition and extraction of 3-D shape features from CAD solid models
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Hierarchical Bayesian methods for recognition and extraction of 3-D shape features from CAD solid models

机译:从CAD实体模型识别和提取3-D形状特征的分层贝叶斯方法

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摘要

This paper introduces a new uncertainty reasoning-based method for identification and extraction of manufacturing features from solid model description of objects. A major difficulty faced by previously proposed methods for feature extraction has been the interaction between features. In interacting situations, the representation for various primitive features is nonunique making their recognition very difficult. We develop an approach based on generating, propagating, and combining geometric and topological evidences in a hierarchical belief network for identifying and extracting features. The methodology combines and propagates evidences to determine a set of correct virtual links to be augmented to the cavity graph representing a depression of the object so that the resulting supergraph can be partitioned to obtain the features of the object. The hierarchical belief network is constructed based on the hypotheses for the potential virtual links, the evidences which are topological and geometric relationships at different abstraction levels impact the belief network through their (amount of) support for different hypotheses. The propagation of the impact of different evidences updates the beliefs in the network in accordance with the Bayesian probability rules.
机译:本文介绍了一种基于不确定性推理的新方法,用于从对象的实体模型描述中识别和提取制造特征。先前提出的特征提取方法所面临的主要困难是特征之间的相互作用。在交互情况下,各种原始特征的表示是不唯一的,因此很难识别。我们开发了一种方法,该方法基于在分层信念网络中生成,传播和组合几何和拓扑证据来识别和提取特征。该方法组合并传播证据以确定一组正确的虚拟链接,这些链接将被扩展到表示对象凹陷的腔图,以便可以对所得的超图进行分区以获得对象的特征。基于潜在虚拟链接的假设构建层次的信任网络,不同抽象级别的拓扑和几何关系的证据通过其(对)不同假设的支持量影响信任网络。根据贝叶斯概率规则,不同证据的影响的传播更新了网络中的信念。

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