论文标题
3DMaterialgan:学习3D形状表示材料科学应用的3D形状表示
3DMaterialGAN: Learning 3D Shape Representation from Latent Space for Materials Science Applications
论文作者
论文摘要
在计算机视觉领域,在过去几年中,2D对象的无监督学习迅速发展。但是,3D对象生成并没有与其前身相同的关注或成功。为了促进计算机视觉和材料科学交集的新进展,我们提出了一个3DMaterialgan网络,该网络能够识别和合成单个晶粒,其形态符合给定的3D多晶材料微结构。这种生成的对抗网络(GAN)体系结构从概率潜在空间向量产生复杂的3D对象,而没有来自2D渲染图像的其他信息。我们表明,此方法的性能比在带注定的3D数据集上的最新方法相当或更好,同时也能够区分和生成不容易注释的对象,例如谷物形态。通过对实验现实世界数据的分析,即在商业相关的锻造钛合金中生成的3D晶粒结构,通过统计形状比较验证了我们的算法的价值。该框架为识别和合成多晶材料微观结构奠定了基础,这些微结构用于增材制造,航空航天和结构设计应用。
In the field of computer vision, unsupervised learning for 2D object generation has advanced rapidly in the past few years. However, 3D object generation has not garnered the same attention or success as its predecessor. To facilitate novel progress at the intersection of computer vision and materials science, we propose a 3DMaterialGAN network that is capable of recognizing and synthesizing individual grains whose morphology conforms to a given 3D polycrystalline material microstructure. This Generative Adversarial Network (GAN) architecture yields complex 3D objects from probabilistic latent space vectors with no additional information from 2D rendered images. We show that this method performs comparably or better than state-of-the-art on benchmark annotated 3D datasets, while also being able to distinguish and generate objects that are not easily annotated, such as grain morphologies. The value of our algorithm is demonstrated with analysis on experimental real-world data, namely generating 3D grain structures found in a commercially relevant wrought titanium alloy, which were validated through statistical shape comparison. This framework lays the foundation for the recognition and synthesis of polycrystalline material microstructures, which are used in additive manufacturing, aerospace, and structural design applications.