Abstract: Sketching is a quick ideation and multimedia tool for effectively expressing design intent. By translating simple strokes into CAD models, it allows non-expert users to create editable designs, reducing the learning curve associated with traditional CAD software. However, current sketch-based CAD modeling methods are often limited to basic shapes and require structured inputs, making them less robust when dealing with varied sketch styles. To overcome these challenges, we propose a novel sketch-based modeling framework DAFU-CAD, that is both efficient and robust. Our approach features a Depth-Assisted and Feature-Unraveling sketch classification module that categorizes sketches into corresponding modeling operations, independent of their drawing style. A parameter regression and optimization module then estimates the modeling parameters, ensuring consistent and stable model reconstruction across different sketch inputs. To support this, we compile a diverse sketch dataset with a range of modeling categories and abstraction levels. Experimental results show that our method outperforms existing approaches in terms of both robustness and versatility.
External IDs:doi:10.1145/3746027.3755252
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