Skip to main content
Remote SensingVolume 12, Issue 9, 1 May 2020, Article number 1515

A deep learning model for automatic plastic mapping using unmanned aerial vehicle (UAV) data(Article)(Open Access)

  Save all to author list
  • aFaculty of Architecture, Civil Engineering and Geodesy, University of Banja Luka, Banja Luka, 78000, Bosnia and Herzegovina
  • bFaculty of Technical Science, University of Novi Sad, Novi Sad, 21000, Serbia
  • cGEOINCA, Universidad de León, Ponferrada, 24404, Spain

Abstract

Although plastic pollution is one of the most noteworthy environmental issues nowadays, there is still a knowledge gap in terms of monitoring the spatial distribution of plastics, which is needed to prevent its negative effects and to plan mitigation actions. Unmanned Aerial Vehicles (UAVs) can provide suitable data for mapping floating plastic, but most of the methods require visual interpretation and manual labeling. The main goals of this paper are to determine the suitability of deep learning algorithms for automatic floating plastic extraction from UAV orthophotos, testing the possibility of differentiating plastic types, and exploring the relationship between spatial resolution and detectable plastic size, in order to define a methodology for UAV surveys to map floating plastic. Two study areas and three datasets were used to train and validate the models. An end-to-end semantic segmentation algorithm based on U-Net architecture using the ResUNet50 provided the highest accuracy to map different plastic materials (F1-score: Oriented Polystyrene (OPS): 0.86; Nylon: 0.88; Polyethylene terephthalate (PET): 0.92; plastic (in general): 0.78), showing its ability to identify plastic types. The classification accuracy decreased with the decrease in spatial resolution, performing best on 4 mm resolution images for all kinds of plastic. The model provided reliable estimates of the area and volume of the plastics, which is crucial information for a cleaning campaign. © 2020 by the authors.

Author keywords

AIAutomatic detectionDeep learning;mapping plasticRemote sensingSegmentationUAV

Indexed keywords

Engineering controlled terms:AntennasElastomersImage resolutionImage segmentationLearning algorithmsLearning systemsMappingPlastic bottlesPlasticsPolyethylene terephthalatesSemanticsUnmanned aerial vehicles (UAV)
Engineering uncontrolled termsClassification accuracyEnvironmental issuesOriented polystyrenesPolyethylene terephthalates (PET)Reliable estimatesSemantic segmentationSpatial resolutionVisual interpretation
Engineering main heading:Deep learning
  • ISSN: 20724292
  • Source Type: Journal
  • Original language: English
  • DOI: 10.3390/RS12091515
  • Document Type: Article
  • Publisher: MDPI AG

  Alvarez-Taboada, F.; GEOINCA, Universidad de León, Ponferrada, Spain;
© Copyright 2020 Elsevier B.V., All rights reserved.

Cited by 68 documents

Rajendrakumar, S. , Rahut, D.B. , Shimly, S.
Far-Reaching Impact of Microplastics on Agricultural Systems: Options for Mitigation and Adaptation
(2025) Land Degradation and Development
Olyaei, M. , Ebtehaj, A. , Ellis, C.R.
A Hyperspectral Reflectance Database of Plastic Debris with Different Fractional Abundance in River Systems
(2024) Scientific Data
Zhao, F. , Liu, Y. , Wang, J.
Riverbed litter monitoring using consumer-grade aerial-aquatic speedy scanner (AASS) and deep learning based super-resolution reconstruction and detection network
(2024) Marine Pollution Bulletin
View details of all 68 citations
{"topic":{"name":"Marine Pollution; Water Pollutant; Environmental Monitoring","id":4475,"uri":"Topic/4475","prominencePercentile":99.45393,"prominencePercentileString":"99.454","overallScholarlyOutput":0},"dig":"b3e5f4e5254b8a37d75d86583b6ab303025854c9cabc2f812c4644280d38a31a"}

SciVal Topic Prominence

Topic:
Prominence percentile: