Analysis of human sketches in deep learning has advanced immensely through the use of waypoint-sequences rather than raster-graphic representations. We further aim to model sketches as a sequence of low-dimensional parametric curves. To this end, we propose an inverse graphics framework capable of approximating a raster or waypoint based stroke encoded as a point-cloud with a variable-degree B\'ezier curve. Building on this module, we present Cloud2Curve, a generative model for scalable high-resolution vector sketches that can be trained end-to-end using point-cloud data alone. As a consequence, our model is also capable of deterministic vectorization which can map novel raster or waypoint based sketches to their corresponding high-resolution scalable B\'ezier equivalent. We evaluate the generation and vectorization capabilities of our model on Quick, Draw! and K-MNIST datasets.
翻译:深层学习中的人类素描分析通过使用路标序列而不是光谱图解取得了巨大进展。 我们进一步将素描建模作为低维参数曲线的序列。 为此,我们提出一个反向图形框架,能够以可变度 B\'ezier 曲线作为点球对以光线或中点为基础的中风进行编码。 我们在此模块的基础上展示Cloud2Curve,这是一个可缩放高分辨率矢量图谱的基因化模型,可以仅用点球数据对端到端进行培训。结果,我们的模型还能够将新光栅或以路径为基础的草图绘制成高分辨率可缩放B\'ezier等值。我们评估我们的快速、绘图和K-MNIST数据集模型的生成和矢量化能力。