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<dc:title>SAGRNet: A novel object-based graph convolutional neural network for diverse vegetation cover classification in remotely-sensed imagery</dc:title>
<dc:creator>Gui, Baoling</dc:creator>
<dc:creator>Sam, Lydia</dc:creator>
<dc:creator>Bhardwaj, Anshuman</dc:creator>
<dc:creator>Soto Gómez, Diego</dc:creator>
<dc:creator>González Peñaloza, Félix</dc:creator>
<dc:creator>Buchroithner, Manfred F.</dc:creator>
<dc:creator>Green, David R.</dc:creator>
<dc:subject>Object-based classification</dc:subject>
<dc:subject>Graph convolutional</dc:subject>
<dc:subject>Vegetation mapping</dc:subject>
<dc:subject>Deep learning</dc:subject>
<dc:subject>Remote sensing</dc:subject>
<dc:description>Growing global population, changing climate, and shrinking land resources demand for quicker, efficient, and&#xd;
more accurate methods of mapping and monitoring vegetation cover in remote sensing datasets. Many deep&#xd;
learning-based methods have been widely applied for semantic segmentation tasks in remote sensing images of&#xd;
vegetated environments. However, most existing models are pixel-based, which introduces challenges such as&#xd;
high time consumption, cumbersome implementation, and limited scalability. This paper presents the SAGRNet&#xd;
model, a Graph Convolutional Neural Network (GCN) that incorporates sampling aggregation and self-attention&#xd;
mechanisms, while leveraging the ResNet residual network structure. A key innovation of SAGRNet is its ability&#xd;
to fuse features extracted through diverse algorithms, enabling comprehensive representation and enhanced&#xd;
classification performance. The SAGRNet model demonstrates superior performance over leading pixel-based&#xd;
neural networks, such as U-Net++ and DeepLabV3, in terms of both time efficiency and accuracy in vegetation image classification tasks. We achieved an overall mapping accuracy of ~90 % using SAGRNet, compared to&#xd;
~87% and ~85% from U-Net++ and DeepLabV3, respectively. Additionally, it offers more convenience in data&#xd;
processing. Furthermore, the model significantly outperforms cutting-edge graph-based convolutional networks,&#xd;
including Graph U-Net (achieved overall accuracy ~65%) and TGNN (achieved overall accuracy ~75%),&#xd;
showcasing exceptional generalization capability and classification accuracy. This paper provides a comprehensive analysis of the various processing aspects of this object-based GCN for vegetation mapping and emphasizes its significant potential for practical use. The model’s versatility can also be expanded to other image&#xd;
processing domains, offering unprecedented possibilities of information extraction from satellite imagery</dc:description>
<dc:date>2026-05-26T08:20:19Z</dc:date>
<dc:date>2026-05-26T08:20:19Z</dc:date>
<dc:date>2025-09</dc:date>
<dc:type>info:eu-repo/semantics/article</dc:type>
<dc:identifier>0924-2716</dc:identifier>
<dc:identifier>https://hdl.handle.net/10259/11723</dc:identifier>
<dc:identifier>10.1016/j.isprsjprs.2025.06.004</dc:identifier>
<dc:language>eng</dc:language>
<dc:relation>ISPRS Journal of Photogrammetry and Remote Sensing. 2025, V. 227, p. 99-124</dc:relation>
<dc:relation>https://doi.org/10.1016/j.isprsjprs.2025.06.004</dc:relation>
<dc:rights>http://creativecommons.org/licenses/by/4.0/</dc:rights>
<dc:rights>info:eu-repo/semantics/openAccess</dc:rights>
<dc:rights>Atribución 4.0 Internacional</dc:rights>
<dc:publisher>Elsevier</dc:publisher>
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