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Methods Ecol Evol - 2022 - Niedballa - imageseg An R package for deep learning‐based image segmentation.pdf 1,99MB
WeightNameValue
1000 Titel
  • imageseg: An R package for deep learning‐based image segmentation
1000 Autor/in
  1. Niedballa, Jürgen |
  2. Axtner, Jan |
  3. Döbert, Timm |
  4. Tilker, Andrew |
  5. Nguyen, An |
  6. Wong, Seth |
  7. Fiderer, Christian |
  8. Heurich, Marco |
  9. Wilting, Andreas |
1000 Erscheinungsjahr 2022
1000 LeibnizOpen
1000 Publikationstyp
  1. Artikel |
1000 Online veröffentlicht
  • 2022-10-02
1000 Erschienen in
1000 Quellenangabe
  • 13(11):2363-2371
1000 FRL-Sammlung
1000 Copyrightjahr
  • 2022
1000 Lizenz
1000 Verlagsversion
  • https://doi.org/10.1111/2041-210X.13984 |
1000 Ergänzendes Material
  • https://besjournals.onlinelibrary.wiley.com/doi/10.1111/2041-210X.13984#support-information-section |
1000 Publikationsstatus
1000 Sprache der Publikation
1000 Abstract/Summary
  • Convolutional neural networks (CNNs) and deep learning are powerful and robust tools for ecological applications, and are particularly suited for image data. Image segmentation (the classification of all pixels in images) is one such application and can, for example, be used to assess forest structural metrics. While CNN-based image segmentation methods for such applications have been suggested, widespread adoption in ecological research has been slow, likely due to technical difficulties in implementation of CNNs and lack of toolboxes for ecologists. Here, we present R package imageseg which implements a CNN-based workflow for general purpose image segmentation using the U-Net and U-Net++ architectures in R. The workflow covers data (pre)processing, model training and predictions. We illustrate the utility of the package with image recognition models for two forest structural metrics: tree canopy density and understorey vegetation density. We trained the models using large and diverse training datasets from a variety of forest types and biomes, consisting of 2877 canopy images (both canopy cover and hemispherical canopy closure photographs) and 1285 understorey vegetation images. Overall segmentation accuracy of the models was high with a Dice score of 0.91 for the canopy model and 0.89 for the understorey vegetation model (assessed with 821 and 367 images respectively). The image segmentation models performed significantly better than commonly used thresholding methods, and generalized well to data from study areas not included in training. This indicates robustness to variation in input images and good generalization strength across forest types and biomes. The package and its workflow allow simple yet powerful assessments of forest structural metrics using pretrained models. Furthermore, the package facilitates custom image segmentation with single or multiple classes and based on colour or grayscale images, for example, for applications in cell biology or for medical images. Our package is free, open source and available from CRAN. It will enable easier and faster implementation of deep learning-based image segmentation within R for ecological applications and beyond.
1000 Sacherschließung
lokal canopy density
lokal machine learning
lokal convolutional neural network
lokal Ecological Modeling
lokal computer vision
lokal Ecology, Evolution, Behavior and Systematics
lokal canopy hemispherical photography
lokal UNet
lokal forest monitoring
lokal vegetation density
1000 Fächerklassifikation (DDC)
1000 Liste der Beteiligten
  1. https://orcid.org/0000-0002-9187-2116|https://orcid.org/0000-0003-1269-5586|https://orcid.org/0000-0002-1601-8665|https://orcid.org/0000-0003-3630-8691|https://orcid.org/0000-0003-0456-3866|https://orcid.org/0000-0001-8083-9268|https://orcid.org/0000-0001-9706-6265|https://orcid.org/0000-0003-0051-2930|https://orcid.org/0000-0001-5073-9186
1000 Label
1000 Förderer
  1. Bundesamt für Naturschutz |
  2. Bundesministerium für Bildung und Forschung |
  3. Commonwealth Scientific and Industrial Research Organisation |
  4. Deutsche Forschungsgemeinschaft |
  5. United States Agency for International Development |
  6. University of Western Australia |
1000 Fördernummer
  1. 3518830200
  2. 01LN1301A
  3. -
  4. 491292795
  5. 72044020CA00001
  6. -
1000 Förderprogramm
  1. -
  2. -
  3. -
  4. -
  5. -
  6. -
1000 Dateien
  1. imageseg: An R package for deep learning‐based image segmentation
1000 Förderung
  1. 1000 joinedFunding-child
    1000 Förderer Bundesamt für Naturschutz |
    1000 Förderprogramm -
    1000 Fördernummer 3518830200
  2. 1000 joinedFunding-child
    1000 Förderer Bundesministerium für Bildung und Forschung |
    1000 Förderprogramm -
    1000 Fördernummer 01LN1301A
  3. 1000 joinedFunding-child
    1000 Förderer Commonwealth Scientific and Industrial Research Organisation |
    1000 Förderprogramm -
    1000 Fördernummer -
  4. 1000 joinedFunding-child
    1000 Förderer Deutsche Forschungsgemeinschaft |
    1000 Förderprogramm -
    1000 Fördernummer 491292795
  5. 1000 joinedFunding-child
    1000 Förderer United States Agency for International Development |
    1000 Förderprogramm -
    1000 Fördernummer 72044020CA00001
  6. 1000 joinedFunding-child
    1000 Förderer University of Western Australia |
    1000 Förderprogramm -
    1000 Fördernummer -
1000 Objektart article
1000 Beschrieben durch
1000 @id frl:6449417.rdf
1000 Erstellt am 2023-05-05T09:00:30.291+0200
1000 Erstellt von 336
1000 beschreibt frl:6449417
1000 Bearbeitet von 317
1000 Zuletzt bearbeitet Wed May 24 08:03:00 CEST 2023
1000 Objekt bearb. Wed May 24 08:02:36 CEST 2023
1000 Vgl. frl:6449417
1000 Oai Id
  1. oai:frl.publisso.de:frl:6449417 |
1000 Sichtbarkeit Metadaten public
1000 Sichtbarkeit Daten public
1000 Gegenstand von

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