Topological Microstructure Analysis Using Persistence Landscapes
Pawe{\l} D{\l}otko, Thomas Wanner

TL;DR
This paper demonstrates that averaged persistence landscapes effectively capture key microstructural information in phase separation, enabling accurate detection of concentration and decomposition stages from topological data.
Contribution
It introduces the use of averaged persistence landscapes to recover critical system information from microstructure topology in phase separation.
Findings
Persistence landscapes can detect concentration levels.
Topological features correlate strongly with system parameters.
Method is robust against noise and measurement errors.
Abstract
Phase separation mechanisms can produce a variety of complicated and intricate microstructures, which often can be difficult to characterize in a quantitative way. In recent years, a number of novel topological metrics for microstructures have been proposed, which measure essential connectivity information and are based on techniques from algebraic topology. Such metrics are inherently computable using computational homology, provided the microstructures are discretized using a thresholding process. However, while in many cases the thresholding is straightforward, noise and measurement errors can lead to misleading metric values. In such situations, persistence landscapes have been proposed as a natural topology metric. Common to all of these approaches is the enormous data reduction, which passes from complicated patterns to discrete information. It is therefore natural to wonder what…
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