Accessing topological feature of polycrystalline microstructure using object detection technique
Mridhula Venkatanarayanan, P G Kubendran Amos

TL;DR
This paper introduces a machine learning object detection approach to identify topological features in polycrystalline microstructures, significantly reducing manual effort and improving accuracy in microstructure analysis.
Contribution
The study extends a regression-based object detection algorithm to recognize grain face-classes, demonstrating high accuracy and efficiency in analyzing polycrystalline microstructures.
Findings
Model achieves high overlap with ground truth
Strong agreement in predictions across different datasets
Statistical validation confirms accuracy
Abstract
Faces-classes of grains, often referred to as topological features, largely dictate the evolution of polycrystalline microstructures during grain growth. Realising these topological features is generally an arduous task, often demanding sophisticated techniques. In the present work, a distinct machine-learning algorithm is extended for the first time to comprehend the topological distribution of the grains constituting a polycrystalline continuum. This regression-based object-detection approach, besides significantly reducing human-efforts and ensuring computational efficiency, predicts the face-class of the grains by introducing appropriate bounding boxes. After sufficient training and validation, over 500 epochs, the current model exhibits a remarkable overlap with the ground truth that encompasses manually realised topological features of the polycrystalline microstructures. Accuracy…
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Taxonomy
TopicsMachine Learning in Materials Science · Image Processing and 3D Reconstruction · Cultural Heritage Materials Analysis
