LGCVGRAug 25, 2025

Topology Aware Neural Interpolation of Scalar Fields

arXiv:2508.17995v1h-index: 22025 IEEE Workshop on Topological Data Analysis and Visualization (TopoInVis)
Originality Incremental advance
AI Analysis

This work addresses the challenge of accurately reconstructing time-varying scalar fields for applications in scientific visualization and data analysis, representing an incremental improvement with specific topological enhancements.

The paper tackles the problem of interpolating missing scalar fields in time-varying data by using a neural architecture that learns from keyframes and persistence diagrams, achieving superior data and topological fitting compared to reference schemes.

This paper presents a neural scheme for the topology-aware interpolation of time-varying scalar fields. Given a time-varying sequence of persistence diagrams, along with a sparse temporal sampling of the corresponding scalar fields, denoted as keyframes, our interpolation approach aims at "inverting" the non-keyframe diagrams to produce plausible estimations of the corresponding, missing data. For this, we rely on a neural architecture which learns the relation from a time value to the corresponding scalar field, based on the keyframe examples, and reliably extends this relation to the non-keyframe time steps. We show how augmenting this architecture with specific topological losses exploiting the input diagrams both improves the geometrical and topological reconstruction of the non-keyframe time steps. At query time, given an input time value for which an interpolation is desired, our approach instantaneously produces an output, via a single propagation of the time input through the network. Experiments interpolating 2D and 3D time-varying datasets show our approach superiority, both in terms of data and topological fitting, with regard to reference interpolation schemes.

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