Sketch2Seq:从基于特征的草图分割中重建CAD模型。

Yue Sun, Jituo Li, Ziqin Xu, Jialu Zhang, Xinqi Liu, Dongliang Zhang, Guodong Lu
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引用次数: 0

摘要

基于草图的建模研究从草图自动重建模型,允许用户快速可视化设计概念。基于用户草图生成CAD模型有助于减少新手用户的学习曲线,从而促进CAD软件的日常使用,并将其扩展到非专业群体。虽然各种算法研究从单个草图或线条图自动生成模型,但它们通常生成不可编辑的模型或仅限于简单挤压操作的可编辑模型。为了改善这个问题,我们提出了一种新的基于草图的建模系统Sketch2Seq,它可以生成复杂的、语义的、可编辑的CAD模型。我们的系统消除了用户额外注释的需要,并产生了支持商业软件后续应用的模型。该方法的核心在于从CAD草图中理解用户的设计意图。利用笔画的几何特征和不同层次的拓扑连接,设计了一种用于识别CAD草图中不同操作特征的草图分割网络。此外,为了解决分割任务,引入了CAD草图分割数据集。对比实验和烧蚀评价证明了该方法的有效性。基于分割结果,生成粗CAD序列并逐步执行。同时,利用上下文模型和输入草图对CAD序列的顺序和参数进行优化。所有算法都集成到一个用户界面中。实验和评价验证了整个系统的可行性和优越性,能够对更复杂的特征进行重构,并在更长的序列上获得更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sketch2Seq: Reconstruct CAD models from Feature-based Sketch Segmentation.

Sketch-based modeling studies reconstructing models from sketches automatically, allowing users visualize design concepts rapidly. Generating CAD models based on user sketches helps reduce the learning curve for novice users, which promotes the everyday use of CAD software, and expands its reach to non-professional groups. While various algorithms study automatically generating models from single sketch or line drawing, they often produce non-editable models or editable models limited to simple extrusion operations. To improve this issue, we propose a novel sketch-based modeling system, Sketch2Seq, which generates complex, semantic, and editable CAD models. Our system eliminates the need for additional annotations from users and produces models that support subsequent application in commercial software. The core of our method lies in understanding users' design intent from CAD sketches. We design a novel sketch segmentation network for identifying diverse operation features in CAD sketches, which utilizes geometric features of strokes and different levels of topological connections. Additionally, to tackle the segmentation task, a dataset for CAD sketch segmentation is introduced. Comparative experiments and ablation evaluations prove the effectiveness of the proposed method. Based on segmentation result, coarse CAD sequences are generated and progressively executed. Meanwhile, the orders and parameters of the CAD sequences are optimized with context models and input sketches. All algorithms are integrated into a user interface. Experiments and evaluations validate the feasibility and superiority of our entire system which is able to reconstruct more complex features and achieve better results for longer sequence.

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