TL;DR
This paper introduces a scalable, principled model for extracting network structures from images using optimal transport theory, outperforming heuristic methods and applicable to various natural systems.
Contribution
The authors develop a novel, optimization-based approach for network extraction from images, leveraging optimal transport theory for improved accuracy and efficiency.
Findings
More accurate network extraction from retinal images compared to hand-labeled data.
High performance in extracting river and slime mold networks without ground truth.
Consistent results across diverse datasets with minimal supervision.
Abstract
Images of natural systems may represent patterns of network-like structure, which could reveal important information about the topological properties of the underlying subject. However, the image itself does not automatically provide a formal definition of a network in terms of sets of nodes and edges. Instead, this information should be suitably extracted from the raw image data. Motivated by this, we present a principled model to extract network topologies from images that is scalable and efficient. We map this goal into solving a routing optimization problem where the solution is a network that minimizes an energy function which can be interpreted in terms of an operational and infrastructural cost. Our method relies on recent results from optimal transport theory and is a principled alternative to standard image-processing techniques that are based on heuristics. We test our model…
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