TopTemp: Parsing Precipitate Structure from Temper Topology

Abstract

Technological advances are in part enabled by the development of novel manufacturing processes that give rise to new materials or material property improvements. Development and evaluation of new manufacturing methodologies is labor-, time-, and resource-intensive expensive due to complex, poorly defined relationships between advanced manufacturing process parameters and the resulting microstructures. In this work, we present a topological representation of temper (heat-treatment) dependent material micro-structure, as captured by scanning electron microscopy, called TopTemp. We show that this topological representation is able to support temper classification of microstructures in a data limited setting, generalizes well to previously unseen samples, is robust to image perturbations, and captures domain interpretable features. The presented work outperforms conventional deep learning baselines and is a first step towards improving understanding of process parameters and resulting material properties.

Cite

Text

Emerson et al. "TopTemp: Parsing Precipitate Structure from Temper Topology." ICLR 2022 Workshops: GTRL, 2022.

Markdown

[Emerson et al. "TopTemp: Parsing Precipitate Structure from Temper Topology." ICLR 2022 Workshops: GTRL, 2022.](https://mlanthology.org/iclrw/2022/emerson2022iclrw-toptemp/)

BibTeX

@inproceedings{emerson2022iclrw-toptemp,
  title     = {{TopTemp: Parsing Precipitate Structure from Temper Topology}},
  author    = {Emerson, Tegan and Kassab, Lara and Howland, Scott and Kvinge, Henry and Kappagantula, Keerti Sahithi},
  booktitle = {ICLR 2022 Workshops: GTRL},
  year      = {2022},
  url       = {https://mlanthology.org/iclrw/2022/emerson2022iclrw-toptemp/}
}