Making Sense of Metadata Mess: Alignment & Risk Assessment for Diatom Data Use Case
November 01, 2024 Β· Declared Dead Β· π International Conference on Metadata and Semantics Research
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Authors
Kio Polson, Marina Potapova, Uttam Meena, Chad Peiper, Joshua Brown, Joshua Agar, Jane Greenberg
arXiv ID
2411.00677
Category
cs.IR: Information Retrieval
Citations
0
Venue
International Conference on Metadata and Semantics Research
Last Checked
4 months ago
Abstract
Biologists study Diatoms, a fundamental algae, to assess the health of aquatic systems. Diatom specimens have traditionally been preserved on analog slides, where a single slide can contain thousands of these microscopic organisms. Digitization of these collections presents both metadata challenges and opportunities. This paper reports on metadata research aimed at providing access to a digital portion of the Academy of Natural Sciences' Diatom Herbarium, Drexel University. We report results of a 3-part study covering 1) a review of relevant metadata standards and a microscopy metadata framework shared by Hammer et al., 2) a baseline metadata alignment mapping current diatom metadata properties to standard metadata types, and 3) a metadata risk analysis associated with the course of standard data curation practices. This research is part of an effort involving the transfer of these digital slides to an new system, DataFed, to support global accessible. The final section of this paper includes a conclusion and discusses next steps.
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