Biodiversity Information Science and Standards :
Conference Abstract
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Corresponding author: Sanson T. S. Poon (sanson.poon@nhm.ac.uk)
Received: 05 Oct 2024 | Published: 07 Oct 2024
© 2024 Sanson Poon, Avellina Leong, Thomas Fogerty, Richard Twitchett, Arianna Salili-James, Stephen Stukins, Ben Scott, Vincent Smith
This is an open access article distributed under the terms of the Creative Commons Attribution License (CC BY 4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
Citation:
Poon STS, Leong AMY, Fogerty T, Twitchett R, Salili-James A, Stukins S, Scott B, Smith VS (2024) Automatic Detection and Identification of Calcareous Nannofossils in Chalk Using Deep Learning: A Proof-of-Concept Study for Biostratigraphy and Climate Research. Biodiversity Information Science and Standards 8: e138673. https://doi.org/10.3897/biss.8.138673
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Calcareous nannofossils serve as crucial indicators for establishing the biostratigraphic age of chalk macrofossil specimens in natural science collections. Better age control of specimens collected several hundred years ago enables us to uncover the dark data hidden within these collections and incorporate these data into current research projects, examining ecosystem response to past climate change. However, the manual identification of these microscopic organisms is laborious and subjective, and so we are harnessing deep learning techniques for automatic nannofossil detection and identification.
This approach required the construction of a robust dataset, currently comprising over 100,000 labelled images, complemented by the development of multiple specialised deep learning models. While some models focus on detecting target species, others are dedicated to species classification.
Evaluation on an independent test set showcases the efficacy of our methodology, with the current detection model achieving a balanced accuracy of 93%. Similarly, the classification model demonstrates robust performance, attaining an average balanced accuracy of 96%.
Furthermore, as well as assisting with our biostratigraphic studies, the dataset of accurately labelled images has enabled us to test other aspects of ecosystem response. For example, examining morphometric changes in nannofossils over geological time can provide valuable insights into the potential impact of current global warming on modern phytoplankton assemblages (
Using our dataset, we conducted a deep-learning-enhanced automatic morphometric analysis focusing on the nannofossil species, Tranolithus orionatus. Our analysis revealed that two key morphometric parameters, minor axis and area size, showed statistically significant differences between the Cenomanian stage (approximately 100.5 to 93.9 million years ago) and the post-Cenomanian stages of the Late Cretaceous (approximately 93.9 to 66.0 million years ago). Kolmogorov-Smirnov tests (
Understanding these morphometric changes is crucial due to the close parallels between current climate projections and the warming and greenhouse climate of the Late Cretaceous, particularly the Cenomanian-Turonian boundary event (
These findings underscore the effectiveness of our approach in automating the identification and recognition of chalk nannofossils, helping to unlock natural science collections and to address key questions related to marine response to past climate change.
Natural History Museum London, AI nannofossils, nannofossil morphometrics, ecosystem response, climate change, Tranolithus orionatus
Sanson T. S. Poon
SPNHC-TDWG 2024
This project was conducted at the Natural History Museum (NHM) and was selected as part of the NHM AI Lab Programme (