Machine learning for stone artifact identification: Distinguishing worked stone artifacts from natural clasts using deep neural networks

PLoS One. 2022 Aug 10;17(8):e0271582. doi: 10.1371/journal.pone.0271582. eCollection 2022.

Abstract

Stone artifacts are often the most abundant class of objects found in archaeological sites but their consistent identification is limited by the number of experienced analysts available. We report a machine learning based technology for stone artifact identification as part of a solution to the lack of such experts directed at distinguishing worked stone objects from naturally occurring lithic clasts. Three case study locations from Egypt, Australia, and New Zealand provide a data set of 6769 2D images, 3868 flaked artifact and 2901 rock images used to train and test a machine learning model based on an openly available PyTorch implementation of Faster R-CNN ResNet 50. Results indicate 100% agreement between the model and original human derived classifications, a better performance than the results achieved independently by two human analysts who reassessed the 2D images available to the machine learning model. Machine learning neural networks provide the potential to consistently assess the composition of large archaeological assemblages composed of objects modified in a variety of ways.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Archaeology
  • Artifacts*
  • Humans
  • Machine Learning
  • Neural Networks, Computer*
  • Technology

Grants and funding

This study was supported by the Natalie Blair Memorial Summer Scholarship in Archaeology (https://www.auckland.ac.nz/en/study/scholarships-and-awards/find-a-scholarship/natalie-blair-memorial-summer-scholarship-in-archaeology-996-art.html) awarded to JG. The research in Egypt was supported by a Royal Society of New Zealand Marsden grant (https://www.royalsociety.org.nz/what-we-do/funds-and-opportunities/marsden) (UOA1106) awarded to SH, and support from the University of Auckland. The research in Australia: Australian Research Council grants (https://www.arc.gov.au/grants) (A59925016, DP0557439) awarded to SH, and support from Macquarie University and the University of Auckland The research in New Zealand: Royal Society of New Zealand Marsden grant (UOA1809) awarded to RP, and support from the University of Auckland The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.