eCAD-Net: Editable Parametric CAD Models Reconstruction from Dumb B-Rep Models Using Deep Neural Networks
Article dans une revue avec comité de lecture
Date
2025-01Journal
Computer-Aided DesignAbstract
This paper introduces a novel framework capable of reconstructing editable parametric CAD models from
dumb B-Rep models. First, each B-Rep model is represented with a network-friendly formalism based on UVgraph,
which is then used as input of eCAD-Net, the new deep neural network-based algorithm that predicts
feature-based CAD modeling sequences from the graph. Then, the sequences are scaled and fine-tuned using
a feature matching algorithm that retrieves the exact parameter values from the input dumb CAD model. The
output sequences are then converted in a series of CAD modeling operations to create an editable parametric
CAD model in any CAD modeler. A cleaned dataset is used to learn and validate the proposed approach, and
is provided with the article. The experimental results show that our approach outperforms existing methods
on such reconstruction tasks, and it outputs editable parametric CAD models compatible with existing CAD
modelers and ready for use in downstream engineering applications
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