Extending Point-Based Deep Learning Approaches for Better Semantic Segmentation in CAD

Computer-Aided Design - Tập 166 - Trang 103629 - 2024
Gerico Vidanes1, David Toal1, Xu Zhang2, Andy Keane1, Jon Gregory3, Marco Nunez3
1University of Southampton, UK
2Falmouth University, UK
3Rolls Royce PLC, UK

Tài liệu tham khảo

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