Author:
Casini Luca,Marchetti Nicolò,Montanucci Andrea,Orrù Valentina,Roccetti Marco
Abstract
AbstractThis paper illustrates the results obtained by using pre-trained semantic segmentation deep learning models for the detection of archaeological sites within the Mesopotamian floodplains environment. The models were fine-tuned using openly available satellite imagery and vector shapes coming from a large corpus of annotations (i.e., surveyed sites). A randomized test showed that the best model reaches a detection accuracy in the neighborhood of 80%. Integrating domain expertise was crucial to define how to build the dataset and how to evaluate the predictions, since defining if a proposed mask counts as a prediction is very subjective. Furthermore, even an inaccurate prediction can be useful when put into context and interpreted by a trained archaeologist. Coming from these considerations we close the paper with a vision for a Human–AI collaboration workflow. Starting with an annotated dataset that is refined by the human expert we obtain a model whose predictions can either be combined to create a heatmap, to be overlaid on satellite and/or aerial imagery, or alternatively can be vectorized to make further analysis in a GIS software easier and automatic. In turn, the archaeologists can analyze the predictions, organize their onsite surveys, and refine the dataset with new, corrected, annotations.
Publisher
Springer Science and Business Media LLC
Reference50 articles.
1. Verschoof-van der Vaart, W. B. & Landauer, J. Using CarcassonNet to automatically detect and trace hollow roads in LiDAR data from the Netherlands. J. Cult. Herit. 47, 143–154. https://doi.org/10.1016/j.culher.2020.10.009 (2021).
2. Torrey, L. & Shavlik, J. Transfer learning. In Handbook of Research on Machine Learning Applications and Trends: Algorithms, Methods, and Techniques (eds Torrey, L. & Shavlik, J.) 242–264 (IGI Global, 2010).
3. Deng, J. et al. ImageNet: A large-scale hierarchical image database. In 2009 IEEE Conference on Computer Vision and Pattern Recognition 248–255 (2009).
4. Traviglia, A., Cowley, D. & Lambers, K. Finding common ground: Human and computer vision in archaeological prospection. AARGnews Newslett. Aerial Archaeol. Res. Group 53, 11–24 (2016).
5. Palmer, R. Editorial. AARGnews (2021).
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