Geoscience Data Journal (Jan 2024)

An image dataset of fusulinid foraminifera generated with the aid of deep learning

  • Hanhui Huang,
  • Yukun Shi,
  • Qin Chen,
  • Huiqing Xu,
  • Sicong Song,
  • Yujie Shi,
  • Furao Shen,
  • Junxuan Fan

DOI
https://doi.org/10.1002/gdj3.215
Journal volume & issue
Vol. 11, no. 1
pp. 46 – 56

Abstract

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Abstract Fusulinid foraminifera are among the most common microfossils of the Late Palaeozoic and act as key fossils for stratigraphic correlation, paleogeographic and paleoenvironmental indication, and evolutionary studies of marine life. Accurate and efficient identification forms the basis of such research involving fusulinids but is limited by the lack of digitized image datasets. This article presents the first large image dataset of fusulinids containing 2,400 images of individual samples subjected to 16 genera of all six fusulinid families and labelled to species level. These images were collected from the literature and our unpublished samples through an automatic segmentation procedure implementing BlendMask, a deep learning model. The dataset shows promise for the efficient accumulation of fossil images through automated procedures and will facilitate taxonomists in future morphologic and systematic studies.

Keywords