Self Supervised Learning for Detection of Archaeological Monuments in LiDAR Data

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dc.identifier.uri http://dx.doi.org/10.15488/11638
dc.identifier.uri https://www.repo.uni-hannover.de/handle/123456789/11731
dc.contributor.author Kazimi, Bashir eng
dc.date.accessioned 2022-01-05T13:42:53Z
dc.date.available 2022-01-05T13:42:53Z
dc.date.issued 2021
dc.identifier.citation Kazimi, Bashir: Self Supervised Learning for Detection of Archaeological Monuments in LiDAR Data. Hannover : Leibniz Universität Hannover, 2021. (Wissenschaftliche Arbeiten der Fachrichtung Geodäsie und Geoinformatik der Leibniz Universität Hannover ; 379) 168 S. DOI: https://doi.org/10.15488/11638 eng
dc.description.abstract Detecting and localizing archaeological monuments and historical man-made terrain structures is essential for learning and preserving our cultural heritage. With the advancement of laser scanning technology, it is possible to acquire Airborne Laser Scanning (ALS) point clouds and create Digital Terrain Models (DTMs), which can be analyzed by archaeologists for interesting monuments and structures. However, manually inspecting high volumes of DTM data is a time-consuming task. The goal of this research is to utilize deep learning for automated detection of archaeological monuments and historical man-made terrain structures in DTMs. Southern Lower Saxony, i.e. specifically the Harz mining region, was chosen as the study region because a significant number of monuments can be found here. Due to the limited amounts of annotated data and the large amounts of unlabeled data, the focus is on Self Supervised Learning (SSL). SSL involves two steps: pretext and downstream. In the pretext, a model is trained on unlabeled data to learn intrinsic characteristics and interesting patterns in the input. Downstream is the second step, which involves learning patterns from annotated datasets.In the downstream step, the trained model from the pretext step is either used a fixed feature extractor or directly finetuned for supervised tasks on annotated datasets. In this research, convolutional encoder-decoder networks and Generative Adversarial Networks (GANs) are trained on unlabeled DTM data in the SSL pretext. The trained models are then customized for downstream tasks such as classification, instance segmentation, and semantic segmentation. They are then finetuned on small amounts of annotated data for detection of archaeological monuments and man-made terrain structures in the Harz region in Lower Saxony. Experiments are conducted on three different datasets from the Harz region. The first dataset contains areal structures which includes archaeological monuments such as charcoal kilns, burial mounds and mining holes and other man-made terrain structures such as bomb craters. The second dataset contains linearly elongated structures which includes archaeological monuments such as ditches and hollow ways and other man-made structures such as paths and roads. The third dataset from Harz includes annotated examples of historical stone quarries. Results of the experiments indicate the positive impact of SSL pretraining on the downstream tasks. The best classification algorithm performs similar with and without SSL pretraining. However, for instance and semantic segmentation tasks which are much more complex, SSL pretraining improves the Mean Average Precision (MAP) score by 5.28 % and the Mean Intersection Over Union (MIOU) score by 4.72 %, respectively, on the Harz areal dataset. On the linear structures dataset, the increase in MAP and MIOU scores are 6.18 % and 1.22 %, respectively. Finally, SSL pretraining leads to an increase of 3.02 % in the MIOU score in the stone quarries dataset. eng
dc.language.iso eng eng
dc.publisher Hannover : Leibniz Universität Hannover
dc.relation.ispartofseries Wissenschaftliche Arbeiten der Fachrichtung Geodäsie und Geoinformatik der Leibniz Universität Hannover ; 379
dc.rights CC BY 3.0 DE eng
dc.rights.uri http://creativecommons.org/licenses/by/3.0/de/ eng
dc.subject Historical Mining eng
dc.subject LiDAR eng
dc.subject Archaeology eng
dc.subject Historical Mining eng
dc.subject Selbstüberwachtes Lernen ger
dc.subject Archäologie ger
dc.subject Historischer Bergbau ger
dc.subject.ddc 620 | Ingenieurwissenschaften und Maschinenbau eng
dc.title Self Supervised Learning for Detection of Archaeological Monuments in LiDAR Data eng
dc.type DoctoralThesis eng
dc.type Book eng
dc.type Text eng
dc.relation.issn 0174-1454
dcterms.extent 168 S.
dc.description.version publishedVersion eng
tib.accessRights frei zug�nglich eng


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