Artificial Interpretation: An Investigation into the Feasibility of Archaeologically Focused Seismic Interpretation via Machine Learning

Heritage Pub Date : 2024-05-10 DOI:10.3390/heritage7050119
Andrew Iain Fraser, Jürgen Landauer, Vincent Gaffney, Elizabeth Zieschang
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Abstract

The value of artificial intelligence and machine learning applications for use in heritage research is increasingly appreciated. In specific areas, notably remote sensing, datasets have increased in extent and resolution to the point that manual interpretation is problematic and the availability of skilled interpreters to undertake such work is limited. Interpretation of the geophysical datasets associated with prehistoric submerged landscapes is particularly challenging. Following the Last Glacial Maximum, sea levels rose by 120 m globally, and vast, habitable landscapes were lost to the sea. These landscapes were inaccessible until extensive remote sensing datasets were provided by the offshore energy sector. In this paper, we provide the results of a research programme centred on AI applications using data from the southern North Sea. Here, an area of c. 188,000 km2 of habitable terrestrial land was inundated between c. 20,000 BP and 7000 BP, along with the cultural heritage it contained. As part of this project, machine learning tools were applied to detect and interpret features with potential archaeological significance from shallow seismic data. The output provides a proof-of-concept model demonstrating verifiable results and the potential for a further, more complex, leveraging of AI interpretation for the study of submarine palaeolandscapes.
人工解释:通过机器学习研究考古学重点地震解释的可行性
人工智能和机器学习应用在遗产研究中的价值日益受到重视。在一些特定领域,特别是遥感领域,数据集的范围和分辨率都在不断提高,以至于人工解读都成了问题,而能够从事此类工作的熟练解读人员又十分有限。解读与史前水下景观相关的地球物理数据集尤其具有挑战性。在末次冰川极盛期之后,全球海平面上升了 120 米,大片适宜居住的地貌被海水淹没。在近海能源部门提供大量遥感数据集之前,这些地貌是无法进入的。在本文中,我们利用北海南部的数据提供了一项以人工智能应用为中心的研究计划的成果。在这里,约 18.8 万平方公里的可居住陆地在约公元前 2 万年至公元前 7000 年间被淹没,同时被淹没的还有其中的文化遗产。作为该项目的一部分,我们应用机器学习工具从浅层地震数据中检测和解释具有潜在考古意义的特征。项目成果提供了一个概念验证模型,展示了可验证的结果以及进一步利用更复杂的人工智能解释来研究海底古地貌的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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