Evaluation of Boulder Characteristics for Improved Boulder Detection Based on Machine Learning Techniques

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  • Signe Schilling Hansen
  • Verner Brandbyge Ernstsen
  • Mikkel Skovgaard Andersen
  • Zyad Al-Hamdani
  • Ramona Baran
  • Manfred Niederwieser
  • Frank Steinbacher
  • Kroon, Aart

Detailed maps of the seabed and knowledge of its habitats are critical for a wide range of tasks, such as sustainable development, and environmental protection. Boulders on the seabed form an important environment for ecosystems, but the detection of them is challenging. In this study, we aim to improve the understanding of boulder predictors and to determine connections between predictors and boulder environments on different spatial scales. The Relief-F filter feature selection algorithm was used on four 30 m x 30 m areas in Rodsand lagoon, containing one boulder each, to determine the most relevant predictors. The predictors could be divided into four groups detecting different boulder characteristics: colour contrast, height, boulder boundaries, and spherical geometry. Twelve different types of boulder environments were evaluated. Bare, spherical boulders on sandy seabeds can be predicted from all four predictor groups. It is not possible to detect non-spherical boulders on seabed covered by vegetation. The best predictors for boulder detection depend on the shape and size of the boulder and the surrounding sediment and vegetation. The predictors were evaluated on a larger 400 x 2500 m area. When up-scaling the boulder detection area, larger seabed structures may affect the results. Therefore, knowledge about these structures can be used to remove errors and uncertainties from machine learning input data.

Original languageEnglish
Article number421
JournalGeosciences
Volume12
Issue number11
Number of pages29
ISSN2076-3263
DOIs
Publication statusPublished - 2022

    Research areas

  • boulder characteristics, boulder detection, boulder predictors, habitat mapping, machine learning, seabed environments

ID: 329745977