3D Shape Matching and Inspection Using Geometric Features and Relational Learning

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In this paper we consider the problem of matching 3D sensed data with models and inspection for defects where the correspondence between models and data needs to be solved in robust and efficient ways. We explore the use of machine learning (in particular, relational learning) as an efficient method for solving correspondence (and so, pose estimation) as well as automatically generating rules for acceptable shape variations from training data. As an additional but necessary issue, we also consider the use of view-independent covariance methods for the extraction of surface features used to determine shape signatures which correspond to curvature-like surface attributes. Such features are utilized in the relational learning model.

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论文评审过程:Received 1 January 1997, Accepted 29 September 1997, Available online 10 April 2002.

论文官网地址:https://doi.org/10.1006/cviu.1997.0659