李秀玲, 李福胜, 张树生. Local Feature Retrieval of 3D CAD Model Using Point Cloud Deep Learning[J]. Mechanical Science and Technology for Aerospace Engineering, 2025, 44(12): 2161-2173.
李秀玲, 李福胜, 张树生. Local Feature Retrieval of 3D CAD Model Using Point Cloud Deep Learning[J]. Mechanical Science and Technology for Aerospace Engineering, 2025, 44(12): 2161-2173. DOI: 10.13433/j.cnki.1003-8728.20230373.
In the context of three-dimensional numerical control process reuse
the need for pre-defined local machining features are complex and dependent heavily on the expert knowledge or experience. This seriously affects the accuracy of similar process retrieval and subsequent reusability. To address these issues
a novel method based on the point cloud deep learning for local feature retrieval from 3D CAD models is proposed. The part's three-dimensional geometric model is transformed into a point cloud
and uniform down sampling reconstruction and normal vector calculation are applied to the part's point cloud model to achieve a three-dimensional point cloud representation of the part's geometry. Subsequently
based on the PointNet++ network architecture
the method extracts the local features of the part by reducing the number of network layers
applying max pooling operations
and removing fully connected layers. Then
a similarity retrieval method based on the correlation between the part's local features and the design requirements is used to retrieve the similar manufacturing processes. The present method is validated on a cavity machining feature
and the results demonstrate its effectiveness in extracting local part features and retrieving the similar manufacturing processes
supporting the rapid process design by subsequent process personnel.