3D scanning as a technique to digitize objects in reality and create their 3D models, is used in many fields and areas. Though the quality of 3D scans depends on the technical characteristics of the 3D scanner, the common drawback is the smoothing of fine details, or the edges of an object. We introduce SepicNet, a novel deep network for the detection and parametrization of sharp edges in 3D shapes as primitive curves. To make the network end-to-end trainable, we formulate the curve fitting in a differentiable manner. We develop an adaptive point cloud sampling technique that captures the sharp features better than uniform sampling. The experiments were conducted on a newly introduced large-scale dataset of 50k 3D scans, where the sharp edge annotations were extracted from their parametric CAD models, and demonstrate significant improvement over state-of-the-art methods.
翻译:三维扫描是数字化现实中的物体并创建它们的 3D 模型的一种技术,在许多领域中使用。尽管 3D 扫描的质量取决于 3D 扫描仪的技术特性,但通常的缺点是平滑大量的细节或物体的边缘。我们介绍了 SepicNet,这是一种新颖的深度网络,用于检测和参数化 3D 形状中的锐边,以生成基本曲线。为了使网络端到端可训练,我们以可微分的方式提出了曲线拟合的公式。我们开发了一种自适应的点云采样技术,比均匀采样更好地捕获了尖锐的特征。实验是在一个新引入的 50k 3D 扫描数据集上进行的,其中尖锐的边缘注释是从它们的参数 CAD 模型中提取出来的,并展示了比现有先进方法显着的改进。