Explainable Binary Classification of Separable Shape Ensembles
- URL: http://arxiv.org/abs/2410.12994v1
- Date: Wed, 16 Oct 2024 19:42:47 GMT
- Title: Explainable Binary Classification of Separable Shape Ensembles
- Authors: Zachary Grey, Nicholas Fisher, Andrew Glaws, Gunay Dogan,
- Abstract summary: Materials scientists utilize image segmentation of micrographs to create large curve ensembles representing grain boundaries of material microstructures.
We seek to bolster this application, using novel pattern recognition formalisms and inference over large ensembles of segmented curves.
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- Abstract: Materials scientists utilize image segmentation of micrographs to create large curve ensembles representing grain boundaries of material microstructures. Observations of these collections of shapes can facilitate inferences about material properties and manufacturing processes. We seek to bolster this application, and related engineering/scientific tasks, using novel pattern recognition formalisms and inference over large ensembles of segmented curves -- i.e., facilitate principled assessments for quantifying differences in distributions of shapes. To this end, we apply a composite integral operator to motivate accurate and efficient numerical representations of discrete planar curves over matrix manifolds. The main result is a rigid-invariant orthonormal decomposition of curve component functions into separable forms of scale variations and complementary features of undulation. We demonstrate how these separable shape tensors -- given thousands of curves in an ensemble -- can inform explainable binary classification of segmented images by utilizing a product maximum mean discrepancy to distinguish the shape distributions; absent labelled data, building interpretable feature spaces in seconds without high performance computation, and detecting discrepancies below cursory visual inspections.
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