CGLGFeb 27, 2024

Geometric Deep Learning for Computer-Aided Design: A Survey

arXiv:2402.17695v227 citationsh-index: 18Has CodeIEEE Access
Originality Synthesis-oriented
AI Analysis

It addresses the problem of improving efficiency and innovation in CAD workflows for designers and engineers, but is incremental as it is a survey summarizing existing techniques.

This survey tackles the application of geometric deep learning in computer-aided design (CAD) to enhance design processes, covering methods for similarity analysis, model synthesis, and generation from various inputs, and providing benchmarks and open-source resources.

Geometric Deep Learning techniques have become a transformative force in the field of Computer-Aided Design (CAD), and have the potential to revolutionize how designers and engineers approach and enhance the design process. By harnessing the power of machine learning-based methods, CAD designers can optimize their workflows, save time and effort while making better informed decisions, and create designs that are both innovative and practical. The ability to process the CAD designs represented by geometric data and to analyze their encoded features enables the identification of similarities among diverse CAD models, the proposition of alternative designs and enhancements, and even the generation of novel design alternatives. This survey offers a comprehensive overview of learning-based methods in computer-aided design across various categories, including similarity analysis and retrieval, 2D and 3D CAD model synthesis, and CAD generation from point clouds, and single/multi-view images. Additionally, it provides a complete list of benchmark datasets and their characteristics, along with open-source codes that have propelled research in this domain. The final discussion delves into the challenges prevalent in this field, followed by potential future research directions in this rapidly evolving field.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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