Large-scale detection of marine debris in coastal areas with Sentinel-2

Detecting and quantifying marine pollution and macroplastics is an increasingly pressing ecological issue that directly impacts ecology and human health. Here, remote sensing can provide reliable estimates of plastic pollution by regularly monitoring and detecting marine debris in coastal areas. In this work, we present a detector for marine debris built on a deep segmentation model that outputs a probability for marine debris at the pixel level. We train this detector with a combination of annotated datasets of marine debris and evaluate it on specifically selected test sites where it is highly probable that plastic pollution is present in the detected marine debris. We integrate data-centric artificial intelligence principles by devising a training strategy with extensive sampling of negative examples and an automated label refinement of coarse hand labels. This yields a deep learning model that achieves higher accuracies on benchmark comparisons than existing detection models trained on previous datasets.

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Bibliographic Details
Main Authors: Rußwurm, Marc, Venkatesa, Sushen Jilla, Tuia, Devis
Format: Article/Letter to editor biblioteca
Language:English
Subjects:Earth sciences, pollution, remote sensing,
Online Access:https://research.wur.nl/en/publications/large-scale-detection-of-marine-debris-in-coastal-areas-with-sent
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