Many real-world objects are designed by smooth curves, especially in the domain of aerospace and ship, where aerodynamic shapes (e.g., airfoils) and hydrodynamic shapes (e.g., hulls) are designed. To facilitate the design process of those objects, we propose a deep learning based generative model that can synthesize smooth curves. The model maps a low-dimensional latent representation to a sequence of discrete points sampled from a rational B\'ezier curve. We demonstrate the performance of our method in completing both synthetic and real-world generative tasks. Results show that our method can generate diverse and realistic curves, while preserving consistent shape variation in the latent space, which is favorable for latent space design optimization or design space exploration.
翻译:许多现实世界的物体都是用光滑曲线设计的,特别是在航空航天和船舶领域,其中设计了空气动力形状(例如空气油)和流体动力形状(例如船体)。为了便利这些物体的设计过程,我们提议了一个深层次的基于学习的基因化模型,可以合成光滑曲线。模型绘制了从理性B\'ezier曲线取样的离散点序列的低维潜在代表。我们展示了我们完成合成和真实世界基因化任务的方法的性能。结果显示,我们的方法可以产生多样化和现实的曲线,同时保持潜在空间的连续形状变化,这对潜在的空间设计优化或设计空间探索是有利的。