This work addresses the problem of non-rigid registration of 3D scans, which is at the core of shape modeling techniques. Firstly, we propose a new kernel based on geodesic distances for the Gaussian Process Morphable Models (GPMMs) framework. The use of geodesic distances into the kernel makes it more adapted to the topological and geometric characteristics of the surface and leads to more realistic deformations around holes and curved areas. Since the kernel possesses hyperparameters we have optimized them for the task of face registration on the FaceWarehouse dataset. We show that the Geodesic squared exponential kernel performs significantly better than state of the art kernels for the task of face registration on all the 20 expressions of the FaceWarehouse dataset. Secondly, we propose a modification of the loss function used in the non-rigid ICP registration algorithm, that allows to weight the correspondences according to the confidence given to them. As a use case, we show that we can make the registration more robust to outliers in the 3D scans, such as non-skin parts.
翻译:这项工作解决了3D扫描的非硬性登记问题,这是形状模型技术的核心。 首先,我们提议为高山进程软体模型(GMMMs)框架提供基于大地距离的新内核。 使用内核的大地距离使其更适应表面的地形和几何特征,导致在孔和曲线区域周围出现更现实的变形。 由于内核拥有超分,我们优化了它们,以完成面部瓦雷豪斯数据集的面部登记任务。 我们表明,Geodesic 方形指数内核比用于FaceWarehouse数据集所有20个表达式的面部登记任务的艺术内核状态要好得多。 其次,我们提议修改非硬化的比较方案登记算法中所使用的损失函数,从而能够根据给它们的信任度加权对应的对应数据。 作为使用的例子,我们表明,我们可以使3D扫描的外核(如非外壳部分)的登记更加有力。