Computing the Bottleneck Distance between Persistent Homology Transforms
By: Michael Kerber, Elena Xinyi Wang
Potential Business Impact:
Compares shapes by measuring how their features change.
The Persistent Homology Transform (PHT) summarizes a shape in $\R^m$ by collecting persistence diagrams obtained from linear height filtrations in all directions on $\mathbb{S}^{m-1}$. It enjoys strong theoretical guarantees, including continuity, stability, and injectivity on broad classes of shapes. A natural way to compare two PHTs is to use the bottleneck distance between their diagrams as the direction varies. Prior work has either compared PHTs by sampling directions or, in 2D, computed the exact \textit{integral} of bottleneck distance over all angles via a kinetic data structure. We improve the integral objective to $\tilde O(n^5)$ in place of earlier $\tilde O(n^6)$ bound. For the \textit{max} objective, we give a $\tilde O(n^3)$ algorithm in $\mathbb{R}^2$ and a $\tilde O(n^5)$ algorithm in $\mathbb{R}^3$.
Similar Papers
Kan Approximations of the Persistent Homology Transform
Algebraic Topology
Maps shapes to understand them from any angle.
Persistent Homology with Path-Representable Distances on Graph Data
Algebraic Topology
Finds patterns in data using different distance rules.
Stability of 0-dimensional persistent homology in enriched and sparsified point clouds
Algebraic Topology
Helps understand animal homes with math.