CVMay 29, 2025

GenCAD-Self-Repairing: Feasibility Enhancement for 3D CAD Generation

arXiv:2505.23287v11 citationsh-index: 2CiE
Originality Incremental advance
AI Analysis

This incremental improvement enhances the applicability of AI-driven CAD generation for manufacturing, architecture, and product design by increasing the availability of high-quality training data.

The paper tackled the problem of infeasible boundary representations in generative CAD models, specifically addressing GenCAD's 10% infeasibility rate, and achieved a result where two-thirds of infeasible designs were converted into feasible ones while maintaining geometric accuracy.

With the advancement of generative AI, research on its application to 3D model generation has gained traction, particularly in automating the creation of Computer-Aided Design (CAD) files from images. GenCAD is a notable model in this domain, leveraging an autoregressive transformer-based architecture with a contrastive learning framework to generate CAD programs. However, a major limitation of GenCAD is its inability to consistently produce feasible boundary representations (B-reps), with approximately 10% of generated designs being infeasible. To address this, we propose GenCAD-Self-Repairing, a framework that enhances the feasibility of generative CAD models through diffusion guidance and a self-repairing pipeline. This framework integrates a guided diffusion denoising process in the latent space and a regression-based correction mechanism to refine infeasible CAD command sequences while preserving geometric accuracy. Our approach successfully converted two-thirds of infeasible designs in the baseline method into feasible ones, significantly improving the feasibility rate while simultaneously maintaining a reasonable level of geometric accuracy between the point clouds of ground truth models and generated models. By significantly improving the feasibility rate of generating CAD models, our approach helps expand the availability of high-quality training data and enhances the applicability of AI-driven CAD generation in manufacturing, architecture, and product design.

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