Using pose estimation to identify regions and points on natural history specimens

PLoS Comput Biol. 2023 Feb 22;19(2):e1010933. doi: 10.1371/journal.pcbi.1010933. eCollection 2023 Feb.

Abstract

A key challenge in mobilising growing numbers of digitised biological specimens for scientific research is finding high-throughput methods to extract phenotypic measurements on these datasets. In this paper, we test a pose estimation approach based on Deep Learning capable of accurately placing point labels to identify key locations on specimen images. We then apply the approach to two distinct challenges that each requires identification of key features in a 2D image: (i) identifying body region-specific plumage colouration on avian specimens and (ii) measuring morphometric shape variation in Littorina snail shells. For the avian dataset, 95% of images are correctly labelled and colour measurements derived from these predicted points are highly correlated with human-based measurements. For the Littorina dataset, more than 95% of landmarks were accurately placed relative to expert-labelled landmarks and predicted landmarks reliably captured shape variation between two distinct shell ecotypes ('crab' vs 'wave'). Overall, our study shows that pose estimation based on Deep Learning can generate high-quality and high-throughput point-based measurements for digitised image-based biodiversity datasets and could mark a step change in the mobilisation of such data. We also provide general guidelines for using pose estimation methods on large-scale biological datasets.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Animals
  • Birds* / anatomy & histology
  • Classification* / methods
  • Snails* / anatomy & histology

Grants and funding

This work was funded by a Leverhulme Early Career Fellowship (ECF-2018-101) and Natural Environment Research Council Independent Research Fellowship (NE/T01105X/1) to Christopher R. Cooney; a European Research Council grant (615709, Project ‘ToLERates’) and Royal Society University Research Fellowship (UF120016, URF\R\180006) to Gavin H. Thomas; and a Leverhulme Centre for Doctoral Training grant to Yichen He. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.