Investigating ancient agricultural field systems in Sweden from airborne LIDAR data by using convolutional neural network

IF 2.1 3区 地球科学 0 ARCHAEOLOGY
Melda Küçükdemirci, Giacomo Landeschi, Mattias Ohlsson, Nicolo Dell'Unto
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引用次数: 3

Abstract

Today, the advances in airborne LIDAR technology provide high-resolution datasets that allow specialists to detect archaeological features hidden under wooded areas more efficiently. Still, the complexity and large scale of these datasets require automated analysis. In this respect, artificial intelligence (AI)-based analysis has recently created an alternative approach for interpreting remote sensing data. In this study, a convolutional neural network (CNN) is proposed to detect clearance cairns, which are visible in today's landscape and act as important markers of past agricultural activities. For this aim, the U-shape network architecture is adapted, trained from scratch with an original labelled dataset and tested in various field sites, focusing on southern Sweden. Although it is challenging to tune the hyperparameters and decide on the proper network architecture to obtain reliable prediction, long-running experimental tests with this model produced promising results, with training and validation metrics of 0.8406 Dice-coefficient, 0.7469 Val-dice coefficient, and 0.7350 IuO and 0.6034 Val-IoU values, once trained with the best parameters. Thus, the proposed CNN model in this study made data interpretation quicker and guided scholars to focus on the location of the target objects, opening a new frontier for future landscape analysis and archaeological research.

Abstract Image

基于机载激光雷达数据,利用卷积神经网络对瑞典古代农业系统进行了研究
如今,机载激光雷达技术的进步提供了高分辨率的数据集,使专家能够更有效地检测隐藏在林区下的考古特征。尽管如此,这些数据集的复杂性和大规模需要自动化分析。在这方面,基于人工智能的分析最近创造了一种解释遥感数据的替代方法。在这项研究中,提出了一种卷积神经网络(CNN)来检测清除石堆,这些石堆在当今的景观中可见,是过去农业活动的重要标志。为此,对U型网络架构进行了调整,使用原始标记数据集从头开始进行训练,并在各个现场进行了测试,重点是瑞典南部。尽管调整超参数和决定合适的网络架构以获得可靠的预测具有挑战性,但使用该模型进行的长期实验测试产生了有希望的结果,一旦使用最佳参数进行训练,训练和验证指标为0.8406 Dice系数、0.7469 Val系数以及0.7350 IuO和0.6034 Val‐IoU值。因此,本研究中提出的CNN模型使数据解释更快,并引导学者关注目标物体的位置,为未来的景观分析和考古研究开辟了新的前沿。
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来源期刊
Archaeological Prospection
Archaeological Prospection 地学-地球科学综合
CiteScore
3.90
自引率
11.10%
发文量
31
审稿时长
>12 weeks
期刊介绍: The scope of the Journal will be international, covering urban, rural and marine environments and the full range of underlying geology. The Journal will contain articles relating to the use of a wide range of propecting techniques, including remote sensing (airborne and satellite), geophysical (e.g. resistivity, magnetometry) and geochemical (e.g. organic markers, soil phosphate). Reports and field evaluations of new techniques will be welcomed. Contributions will be encouraged on the application of relevant software, including G.I.S. analysis, to the data derived from prospection techniques and cartographic analysis of early maps. Reports on integrated site evaluations and follow-up site investigations will be particularly encouraged. The Journal will welcome contributions, in the form of short (field) reports, on the application of prospection techniques in support of comprehensive land-use studies. The Journal will, as appropriate, contain book reviews, conference and meeting reviews, and software evaluation. All papers will be subjected to peer review.
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