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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Partial retrieval of CAD models based on the gradient flows in Lie group
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Partial retrieval of CAD models based on the gradient flows in Lie group

机译:李群中基于梯度流的CAD模型部分检索

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摘要

Based on the gradient flows in Lie group, a partial retrieval approach for CAD models is presented in this paper. First, a representation of the face Attributed Relational Graph (ARG) for a CAD model is created from its B-rep model and thus partial retrieval is converted to a subgraph matching problem. Then, an optimization method is adopted to solve the matching problem, where the optimization variable is the vertex mapping and the objective function is the measurement of compatibility between the mapped vertices and between the mapped edges. Different from most previously proposed methods, a homogeneous transformation matrix is introduced to represent the vertex mapping in subgraph matching, whose translational sub-matrix gives the vertex selection in the larger graph and whose orthogonal sub-matrix presents the vertex permutation for the same-sized mapping from the selected vertices to the smaller graphs vertices. Finally, a gradient flow method is developed to search for optimal matching matrix in Special Euclidean group SE(n). Here, a penalty approach is used to handle the constraints on the elements of the matching matrix, which leads its orthogonal part to be a permutation matrix and its translational part to have different integer elements. Experimental results show that it is a promising method to support the partial retrieval of CAD models.
机译:基于Lie群中的梯度流,提出了一种CAD模型的局部检索方法。首先,从CAD模型的B-rep模型创建其模型的面部属性关系图(ARG)表示,并将部分检索转换为子图匹配问题。然后,采用一种优化方法解决匹配问题,该优化变量为顶点映射,目标函数为映射顶点之间以及映射边缘之间的相容性度量。与以前提出的大多数方法不同,引入了均质变换矩阵来表示子图匹配中的顶点映射,其平移子矩阵在较大图中提供了顶点选择,并且正交子矩阵提供了相同尺寸的顶点置换从选定顶点到较小图顶点的映射。最后,提出了一种梯度流方法来搜索特殊欧几里得群SE(n)中的最优匹配矩阵。在这里,使用惩罚方法来处理对匹配矩阵的元素的约束,这导致其正交部分成为置换矩阵,而其平移部分则具有不同的整数元素。实验结果表明,它是一种支持CAD模型局部检索的有前途的方法。

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