MTRL-SCILGJan 18, 2022

A Deep Learning Approach for Semantic Segmentation of Unbalanced Data in Electron Tomography of Catalytic Materials

arXiv:2201.07342v122 citations
Originality Synthesis-oriented
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This work addresses segmentation problems for researchers in materials science and catalysis, but it is incremental as it adapts existing methods to a specific domain.

The paper tackled the challenge of semantic segmentation for unbalanced data in electron tomography of catalytic materials by applying a deep learning approach with weighted focal loss on a U-Net architecture, achieving an average Dice similarity coefficient of 0.96 for the support material and 0.84 for nanoparticle segmentation.

Heterogeneous catalysts possess complex surface and bulk structures, relatively poor intrinsic contrast, and often a sparse distribution of the catalytic nanoparticles (NPs), posing a significant challenge for image segmentation, including the current state-of-the-art deep learning methods. To tackle this problem, we apply a deep learning-based approach for the multi-class semantic segmentation of a $γ$-Alumina/Pt catalytic material in a class imbalance situation. Specifically, we used the weighted focal loss as a loss function and attached it to the U-Net's fully convolutional network architecture. We assessed the accuracy of our results using Dice similarity coefficient (DSC), recall, precision, and Hausdorff distance (HD) metrics on the overlap between the ground-truth and predicted segmentations. Our adopted U-Net model with the weighted focal loss function achieved an average DSC score of 0.96 $\pm$ 0.003 in the $γ$-Alumina support material and 0.84 $\pm$ 0.03 in the Pt NPs segmentation tasks. We report an average boundary-overlap error of less than 2 nm at the 90th percentile of HD for $γ$-Alumina and Pt NPs segmentations. The complex surface morphology of the $γ$-Alumina and its relation to the Pt NPs were visualized in 3D by the deep learning-assisted automatic segmentation of a large data set of high-angle annular dark-field (HAADF) scanning transmission electron microscopy (STEM) tomography reconstructions.

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