Detecting the Archaeological Traces of Tar Production Kilns in the Northern Boreal Forests Based on Airborne Laser Scanning and Deep Learning

Author:

Anttiroiko Niko1,Groesz Floris Jan2,Ikäheimo Janne3ORCID,Kelloniemi Aleksi3,Nurmi Risto3,Rostad Stian2,Seitsonen Oula34ORCID

Affiliation:

1. Finnish Heritage Agency, 00510 Helsinki, Finland

2. Field/Blom, NO-0283 Oslo, Norway

3. Archaeology, Humanities, University of Oulu, 90570 Oulu, Finland

4. Archaeology, Humanities, University of Helsinki, 00014 Helsinki, Finland

Abstract

This paper presents the development and application of a deep learning-based approach for semi-automated detection of tar production kilns using new Finnish high-density Airborne Laser Scanning (ALS) data in the boreal taiga forest zone. The historical significance of tar production, an important livelihood for centuries, has had extensive environmental and ecological impacts, particularly in the thinly inhabited northern and eastern parts of Finland. Despite being one of the most widespread archaeological features in the country, tar kilns have received relatively little attention until recently. The authors employed a Convolutional Neural Networks (CNN) U-Net-based algorithm to detect these features from the ALS data, which proved to be more accurate, faster, and capable of covering systematically larger spatial areas than human actors. It also produces more consistent, replicable, and ethically sustainable results. This semi-automated approach enabled the efficient location of a vast number of previously unknown archaeological features, significantly increasing the number of tar kilns in each study area compared to the previous situation. This has implications also for the cultural resource management in Finland. The authors’ findings have influenced the preparation of the renewal of the Finnish Antiquities Act, raising concerns about the perceived impacts on cultural heritage management and land use sectors due to the projected tenfold increase in archaeological site detection using deep learning algorithms. The use of environmental remote sensing data may provide a means of examining the long-term cultural and ecological impacts of tar production in greater detail. Our pilot studies suggest that artificial intelligence and deep learning techniques have the potential to revolutionize archaeological research and cultural resource management in Finland, offering promising avenues for future exploration.

Funder

Finnish Ministry of Agriculture and Forestry

Kone Foundation

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference32 articles.

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3. Seitsonen, O., and Ikäheimo, J. (2021). Detecting Archaeological Features with Airborne Laser Scanning in the Alpine Tundra of Sápmi, Northern Finland. Remote Sens., 13.

4. Pesiöjärvi opettaa—Tervahautoja tunnistavaa tekoälyä kehittämässä;Anttiroiko;Muinaistutkija,2022

5. Tervahautojen ilmalaserkeilausavusteinen työpöytäinventointi Suomussalmella;Muinaistutkija,2021

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