2022
DOI: 10.1002/esp.5305
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Comparing geomorphological maps made manually and by deep learning

Abstract: Geomorphological maps provide information on the relief, genesis and shape of the earth's surface and are widely used in sustainable spatial developments. The quality of geomorphological maps is however rarely assessed or reported, which limits their applicability. Moreover, older geomorphological maps often do not meet current quality requirements and require updating. This updating is time-consuming and because of its qualitative nature difficult to reproduce, but can be supported by novel computational meth… Show more

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Cited by 18 publications
(6 citation statements)
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References 66 publications
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“…Traditional image features were often extracted through convolutional layers, pooling layers and forward and backward propagation parameters (Du et al, 2019). However, such multiple pooling operations are liable to cause spatial information loss, resulting in the gradient features being mistaken, the segmentation boundaries being ambiguous and the fine accuracy being insufficient among landform types (van der Meij et al, 2022). To address the existing questions, the UNet model has been put forward to break the deadlock, which not only applies contextual semantic information to predict the type of each pixel but also uses the jump structure connection to combine deep and shallow features (Sun et al, 2023).…”
Section: Methodology and Methodsmentioning
confidence: 99%
“…Traditional image features were often extracted through convolutional layers, pooling layers and forward and backward propagation parameters (Du et al, 2019). However, such multiple pooling operations are liable to cause spatial information loss, resulting in the gradient features being mistaken, the segmentation boundaries being ambiguous and the fine accuracy being insufficient among landform types (van der Meij et al, 2022). To address the existing questions, the UNet model has been put forward to break the deadlock, which not only applies contextual semantic information to predict the type of each pixel but also uses the jump structure connection to combine deep and shallow features (Sun et al, 2023).…”
Section: Methodology and Methodsmentioning
confidence: 99%
“…Saha et al, 2021;Schönfeldt et al, 2022;Thi Ngo et al, 2021), landform and geomorphic feature extraction (e.g., Bickel et al, 2021;Du et al, 2019;S. Li et al, 2020;Moseley et al, 2021;Robson et al, 2020;van der Meij et al, 2022;Xie et al, 2020;Xu et al, 2021;W. Zhang et al, 2018W.…”
Section: Cnns For Geomorphic Mapping and Feature Extractionunclassified
“…More recently, DL methods have been explored for slope failure mapping or susceptibility modelling (e.g., Gholami et al., 2021; Huang et al., 2020; S. Li et al., 2020; Prakash et al., 2020; S. Saha et al., 2021; Schönfeldt et al., 2022; Thi Ngo et al., 2021), landform and geomorphic feature extraction (e.g., Bickel et al., 2021; Du et al., 2019; S. Li et al., 2020; Moseley et al., 2021; Robson et al., 2020; van der Meij et al., 2022; Xie et al., 2020; Xu et al., 2021; W. Zhang et al., 2018, 2020), mapping of anthropogenic landscape alterations or archaeological features (e.g., Guyot et al., 2018; Maxwell et al., 2020; Suh et al., 2021; Trier et al., 2015, 2019), and digital soil unit mapping (e.g., Behrens et al., 2018; Padarian et al., 2019; Wadoux, 2019). Generally, these studies highlight the value of modelling spatial patterns in LSPs and/or other spatial data to improve the use of such data for geomorphic mapping and feature extraction.…”
Section: Introductionmentioning
confidence: 99%
“…Recent research on the application of convolutional neural networks in geomorphology includes the use of a multi-channel deep neural network architecture to classify landforms 13 , a comparison of Random Forests and U-Net models to classify loess formations 14 , a comparison between traditional and automated U-Net-based approaches 15 , and classification using textural properties of the terrain 16 .…”
Section: Introductionmentioning
confidence: 99%