A new paradigm for estimating the prevalence of plastic litter in the marine environment

Kyriaki Kylili, Alessandro Artusi, Constantinos Hadjistassou

Research output: Contribution to journalArticlepeer-review

Abstract

The intelligent method proposed herein is formulated on a deep learning technique which can identify, localise and map the shape of plastic debris in the marine environment. Utilising images depicting plastic litter from six beaches in Cyprus, the developed tool pointed to a plastic litter density of 0.035 items/m2. Extrapolated to the entire shorelines of the island, the intelligent approach estimated about 66,000 plastic articles weighting a total of ≈1000 kg. Besides deducing the plastic litter density, the dimensions of all documented plastic litter were determined with the aid of the OpenCV Contours image processing tool. Results revealed that the dominant object length ranged between 10 and 30 cm which is in agreement with the length of common plastic litter often spoiling these coastlines. Concluding, only in-situ visual scan sample surveys and no manual collection means were used to predict the density and the dimensions of the plastic litter.

Original languageEnglish
Article number113127
JournalMarine Pollution Bulletin
Volume173
DOIs
Publication statusPublished - Dec 2021

Keywords

  • Artificial intelligence
  • Coastlines
  • Deep learning
  • Litter density
  • Marine debris
  • Size of plastics

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