We consider a problem of great practical interest: the repairing and recovery of a low-dimensional manifold embedded in high-dimensional space from noisy scattered data. Suppose that we observe a point cloud sampled from the low-dimensional manifold, with noise, and let us assume that there are holes in the data. Can we recover missing information inside the holes? While in low-dimension the problem was extensively studied, manifold repairing in high dimension is still an open problem. We introduce a new approach, called Repairing Manifold Locally Optimal Projection (R-MLOP), that expands the MLOP method introduced by Faigenbaum-Golovin et al. in 2020, to cope with manifold repairing in low and high-dimensional cases. The proposed method can deal with multiple holes in a manifold. We prove the validity of the proposed method, and demonstrate the effectiveness of our approach by considering different manifold topologies, for single and multiple holes repairing, in low and high dimensions.
翻译:我们考虑了一个非常实际感兴趣的问题:从杂乱分散的数据中修复和恢复高维空间中嵌入的低维元体。假设我们观察从低维多元体中取样的点云,有噪音,让我们假设数据中存在漏洞。我们能否在洞中找到缺失的信息?在对问题进行广泛研究的低维体中,高维体修补仍是一个尚未解决的问题。我们引入了一种新的方法,称为“修复本地最佳修补”的方法(R-MLOP),该方法扩大了Faigenbaum-Golovin等人在2020年引入的多维体修补方法,以应对低维体和高维体案例的多维体修补方法。拟议方法可以用多维体处理多个洞。我们证明拟议方法的有效性,并通过考虑不同多维体的单一和多孔修补、低维体和高维体来证明我们的方法的有效性。