Recent years have witnessed the surge of learned representations that directly build upon point clouds. Though becoming increasingly expressive, most existing representations still struggle to generate ordered point sets. Inspired by spherical multi-view scanners, we propose a novel sampling model called Spotlights to represent a 3D shape as a compact 1D array of depth values. It simulates the configuration of cameras evenly distributed on a sphere, where each virtual camera casts light rays from its principal point through sample points on a small concentric spherical cap to probe for the possible intersections with the object surrounded by the sphere. The structured point cloud is hence given implicitly as a function of depths. We provide a detailed geometric analysis of this new sampling scheme and prove its effectiveness in the context of the point cloud completion task. Experimental results on both synthetic and real data demonstrate that our method achieves competitive accuracy and consistency while having a significantly reduced computational cost. Furthermore, we show superior performance on the downstream point cloud registration task over state-of-the-art completion methods.
翻译:近些年来,我们亲眼目睹了直接利用点云的已学表现的激增。 虽然现在大多数现有表现越来越显眼,但是仍然在为生成定点集而挣扎。在球形多视图扫描仪的启发下,我们提议了一个叫做焦点的新型取样模型,以代表三维形状为精密的精细数组。它模拟了在球体上平均分布的摄影机的配置,每个虚拟照相机通过一个小的同心球盖的取样点,从主点上射出光线,通过一个小的同心球盖进行探测,以探测与球体环绕物体可能交叉之处。因此,结构化的圆云是隐含的深度函数。我们对这一新的取样计划提供了详细的几何学分析,并在点云完成任务的背景下证明其有效性。合成和真实数据的实验结果表明,我们的方法既具有竞争性的准确性和一致性,同时又大大降低了计算成本。此外,我们展示了下游点云登记任务相对于最先进的完成方法的优异性表现。