2021
DOI: 10.5194/agile-giss-2-11-2021
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Extraction of linear structures from digital terrain models using deep learning

Abstract: Abstract. This paper explores the role deep convolutional neural networks play in automated extraction of linear structures using semantic segmentation techniques in Digital Terrain Models (DTMs). DTM is a regularly gridded raster created from laser scanning point clouds and represents elevations of the bare earth surface with respect to a reference. Recent advances in Deep Learning (DL) have made it possible to explore the use of semantic segmentation for detection of terrain structures in DTMs. This research… Show more

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Cited by 3 publications
(3 citation statements)
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“…Although machine learning methods such as CarcassonNet (Verschoof‐van der Vaart & Landauer, 2021) or network friction route zones (van Lanen et al, 2015; Vletter & van Lanen, 2018) have recently been increasingly preferred across different geographic scales, the efficiency of the algorithm is determined primarily by the experts who identified and extracted features of the subjects under investigation (Satari et al, 2021). Even the use of modern software may result in data misinterpretation (Seifried & Gardner, 2019).…”
Section: Discussionmentioning
confidence: 99%
“…Although machine learning methods such as CarcassonNet (Verschoof‐van der Vaart & Landauer, 2021) or network friction route zones (van Lanen et al, 2015; Vletter & van Lanen, 2018) have recently been increasingly preferred across different geographic scales, the efficiency of the algorithm is determined primarily by the experts who identified and extracted features of the subjects under investigation (Satari et al, 2021). Even the use of modern software may result in data misinterpretation (Seifried & Gardner, 2019).…”
Section: Discussionmentioning
confidence: 99%
“…While RGB images are commonly used as the primary dataset, and most backbone models require RGB images, digital elevation models (DEMs) can also be utilized. Multi Directional Hillshade based on DEM data with three bands with 8 bits similar to RGB are suitable for Deep learning [24]. Another option is to leverage elevation data directly from the DEM, along with derived features such as slope (ranging from 0° to 90°) and terrain curvature [25].…”
Section: Fig 2 -Flat Roof Leak Samplementioning
confidence: 99%
“…With the increasing success in application of deep learning techniques in many fields, researchers in archaeology are also using deep learning in their tasks. (Caspari and Crespo, 2019;Guyot et al, 2018), archaeological monument segmentation (Kazimi et al, 2019), and extraction of terrain structures (Satari et al, 2021).…”
Section: Related Workmentioning
confidence: 99%