Detection of marine floating plastic using Sentinel-2 imagery and machine learning models
Srikanta Sannigrahi, Bidroha Basu, Arunima Sarkar Basu, Francesco, Pilla

TL;DR
This study demonstrates that machine learning models, especially Random Forest combined with a new spectral index, can accurately detect floating marine plastic debris using Sentinel-2 satellite imagery, offering a cost-effective monitoring tool.
Contribution
The paper introduces a novel spectral index (kNDVI) and applies ML models to detect floating plastic, achieving high accuracy and demonstrating practical deployment in different Mediterranean sites.
Findings
RF outperformed SVM in detection accuracy
Inclusion of kNDVI improved model performance
Detection accuracy reached up to 99% in test sites
Abstract
The increasing level of marine plastic pollution poses severe threats to the marine ecosystem and biodiversity. The present study attempted to explore the full functionality of open Sentinel satellite data and ML models for detecting and classifying floating plastic debris in Mytilene (Greece), Limassol (Cyprus), Calabria (Italy), and Beirut (Lebanon). Two ML models, i.e. Support Vector Machine (SVM) and Random Forest (RF) were utilized to carry out the classification analysis. In-situ plastic location data was collected from the control experiment conducted in Mytilene, Greece and Limassol, Cyprus, and the same was considered for training the models. Both remote sensing bands and spectral indices were used for developing the ML models. A spectral signature profile for plastic was created for discriminating the floating plastic from other marine debris. A newly developed index, kernel…
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Taxonomy
TopicsMicroplastics and Plastic Pollution · Water Quality Monitoring Technologies · Identification and Quantification in Food
MethodsSupport Vector Machine
