A new paradigm for point cloud data analysis has emerged recently, where point clouds are no longer treated as mere compact sets but rather as empirical measures. A notion of distance to such measures has been defined and shown to be stable with respect to perturbations of the measure. This distance can easily be computed pointwise in the case of a point cloud, but its sublevel-sets, which carry the geometric information about the measure, remain hard to compute or approximate. This makes it challenging to adapt many powerful techniques based on the Euclidean distance to a point cloud to the more general setting of the distance to a measure on a metric space. We propose an efficient and reliable scheme to approximate the topological structure of the family of sublevel-sets of the distance to a measure. We obtain an algorithm for approximating the persistent homology of the distance to an empirical measure that works in arbitrary metric spaces. Precise quality and complexity guarantees are given with a discussion on the behavior of our approach in practice.
CITATION STYLE
Buchet, M., Chazal, F., Oudot, S. Y., & Sheehy, D. R. (2015). Efficient and robust persistent homology for measures. In Proceedings of the Annual ACM-SIAM Symposium on Discrete Algorithms (Vol. 2015-January, pp. 168–180). Association for Computing Machinery. https://doi.org/10.1137/1.9781611973730.13
Mendeley helps you to discover research relevant for your work.