Visual Informatics (Sep 2023)

Multi-scale visual analysis of cycle characteristics in spatially-embedded graphs

  • Farhan Rasheed,
  • Talha Bin Masood,
  • Tejas G. Murthy,
  • Vijay Natarajan,
  • Ingrid Hotz

Journal volume & issue
Vol. 7, no. 3
pp. 49 – 58

Abstract

Read online

We present a visual analysis environment based on a multi-scale partitioning of a 2d domain into regions bounded by cycles in weighted planar embedded graphs. The work has been inspired by an application in granular materials research, where the question of scale plays a fundamental role in the analysis of material properties. We propose an efficient algorithm to extract the hierarchical cycle structure using persistent homology. The core of the algorithm is a filtration on a dual graph exploiting Alexander’s duality. The resulting partitioning is the basis for the derivation of statistical properties that can be explored in a visual environment. We demonstrate the proposed pipeline on a few synthetic and one real-world dataset.

Keywords