Automatic detection of seafloor marine litter using towed camera images and deep learning.

Journal: Marine pollution bulletin
Published Date:

Abstract

Aerial and underwater imaging is being widely used for monitoring litter objects found at the sea surface, beaches and seafloor. However, litter monitoring requires a considerable amount of human effort, indicating the need for automatic and cost-effective approaches. Here we present an object detection approach that automatically detects seafloor marine litter in a real-world environment using a Region-based Convolution Neural Network. The neural network is trained on an imagery with 11 manually annotated litter categories and then evaluated on an independent part of the dataset, attaining a mean average precision score of 62%. The presence of other background features in the imagery (e.g., algae, seagrass, scattered boulders) resulted to higher number of predicted litter items compare to the observed ones. The results of the study are encouraging and suggest that deep learning has the potential to become a significant tool for automatically recognizing seafloor litter in surveys, accomplishing continuous and precise litter monitoring.

Authors

  • Dimitris V Politikos
    Institute of Marine Biological Resources and Inland, Hellenic Centre for Marine Research, 16452 Argyroupoli, Greece. Electronic address: dimpolit@hcmr.gr.
  • Elias Fakiris
    Laboratory of Marine Geology and Physical Oceanography, Department of Geology, University of Patras, 26504 Patras, Greece.
  • Athanasios Davvetas
    Institute of Informatics and Telecommunications, National Centre for Scientific Research "Demokritos", Agia Paraskevi, 15310 Athens, Greece.
  • Iraklis A Klampanos
    Institute of Informatics and Telecommunications, National Centre for Scientific Research "Demokritos", Agia Paraskevi, 15310 Athens, Greece.
  • George Papatheodorou
    Laboratory of Marine Geology and Physical Oceanography, Department of Geology, University of Patras, 26504 Patras, Greece.