4.8 Review

Close-range remote sensing-based detection and identification of macroplastics on water assisted by artificial intelligence: A review

Journal

WATER RESEARCH
Volume 222, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.watres.2022.118902

Keywords

Macroplastic; Spectral characteristics; Machine learning; Deep learning; Remote sensing

Funding

  1. Federal Ministry for the Environment, Nature Conservation, Nuclear Safety and Consumer Protection (BMUV)
  2. Federal Ministry for Digital and Transport (BMDV)
  3. [3719 22 301 0]

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This study focuses on the detection and identification of macroplastic debris in aquatic environments using remote sensing and artificial intelligence techniques. It evaluates the current state-of-the-art research and highlights the challenges and promising results of these approaches compared to traditional visual monitoring methods.
Detection and identification of macroplastic debris in aquatic environments is crucial to understand and counter the growing emergence and current developments in distribution and deposition of macroplastics. In this context, close-range remote sensing approaches revealing spatial and spectral properties of macroplastics are very beneficial. To date, field surveys and visual census approaches are broadly acknowledged methods to acquire information, but since 2018 techniques based on remote sensing and artificial intelligence are advancing. Despite their proven efficiency, speed and wide applicability, there are still obstacles to overcome, especially when looking at the availability and accessibility of data. Thus, our review summarizes state-of-the-art research about the visual recognition and identification of different sorts of macroplastics. The focus is on both data acquisition techniques and evaluation methods, including Machine Learning and Deep Learning, but resulting products and published data will also be taken into account. Our aim is to provide a critical overview and outlook in a time where this research direction is thriving fast. This study shows that most Machine Learning and Deep Learning approaches are still in an infancy state regarding accuracy and detail when compared to visual monitoring, even though their results look very promising.

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