About this Abstract |
Meeting |
TMS Specialty Congress 2024
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Symposium
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2nd World Congress on Artificial Intelligence in Materials & Manufacturing (AIM 2024)
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Presentation Title |
A Materials Data Segmentation Garden for Benchmarking Segmentation Models
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Author(s) |
Pawan Kumar Tripathi, Tommy Ciardi, Mingjian Lu, Kristen Hernandez, Max Ligett, Andrew Ballen, Jean-Baptiste Forien, Brian Giera, Manyalibo J. Matthews, Mengjie Li, Kristopher Davis, John Lewandowski, Laura Bruckman, Yinghui Wu, Roger French, Vipin Chaudhary |
On-Site Speaker (Planned) |
Pawan Kumar Tripathi |
Abstract Scope |
Segmentation of materials data is a critical task in various scientific and engineering fields, such as materials science, geology, and medical imaging. Accurate segmentation is essential for understanding the internal structure of materials, identifying defects, and optimizing material properties. To facilitate research and development in this domain, we propose the creation of a Materials Data Segmentation Model Garden (MDSMG). In conjunction with the Materials Data Segmentation Benchmark (MDSB), MDSMG will enable the research community to test their models uniformly and foster creation of better segmentation models. MDSMG will enable testing, evaluating, comparing and developing new materials data segmentation models. The MDSMG will establish standardized evaluation metrics and protocols to assess the performance of segmentation models. MDSL will be an open-source project, freely accessible to the research community. This will encourage innovation, democratize access to advanced segmentation tools, and accelerate the development of new materials analysis techniques. |
Proceedings Inclusion? |
Definite: Other |