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Evaluating the Potential of Semi-Automated Image Analysis for Delimiting Soil and Sediment Layers
Authors:Vincent Haburaj  Jan Krause  Sebastian Pless  Björn Waske  Brigitta Schütt
Institution:1. Freie Universit?t Berlin, Institute of Geographical Sciences, Berlin, Germany;2. Excellence Cluster Topoi, Berlin, Germanyvincent.haburaj@fu-berlin.deORCID Iconhttps://orcid.org/0000-0002-2393-2762;4. Excellence Cluster Topoi, Berlin, Germany;5. Deutsches Zentrum für Luft- und Raumfahrt e.V. (DLR), Institute of Optical Sensor Systems, Berlin, Germany;6. Universit?t Osnabrück, Institute of Computer Science, Osnabrück, Germany
Abstract:ABSTRACT

Established methods for delineating anthropogenic and natural strata during fieldwork are based on the visual and tactile perception of excavators. Modern image analysis techniques can help to ensure objectivity and reproducibility when documenting sections and plana. Within this study we examine the unsupervised classification of digital images as a technique for delimiting layers and identifying stratigraphic features. Assessing the potential of this approach, we exemplarily captured soil profiles with high-contrast stratigraphy, located in the area of a historical vineyard (Brandenburg, Germany). Reproducible analyses were carried out using open-source software, allowing for the future advancement of the methodology utilized and providing a basis for the analysis of more complex stratigraphic sequences. We compare clustering results of high-resolution RGB and hyperspectral images (470–830?nm, 37 bands). Multiple pre-processing and processing steps are carried out to evaluate their influence. Our results render the semi-automatic analysis of RGB images helpful for stratigraphic interpretation.
Keywords:fieldwork  digital archaeology  unsupervised classification  stratigraphy  RGB imaging  spectral imaging  landscape archaeology
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