Implementing State-of-the-Art Deep Learning Approaches for Archaeological Object Detection in Remotely-Sensed Data: The Results of Cross-Domain Collaboration

Q1 Social Sciences Journal of Computer Applications in Archaeology Pub Date : 2021-01-01 DOI:10.5334/jcaa.78
Martin Olivier, Wouter B. Verschoof‐van der Vaart
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引用次数: 8

Abstract

The ever-increasing amount of remotely-sensed data pertaining to archaeology renders human-based analysis unfeasible, especially considering the expert knowledge required to correctly identify structures and objects in these type of data. Therefore, robust and reliable computer-based object detectors are needed, which can deal with the unique challenges of not only remotely-sensed data, but also of the archaeological detection task. In this research – across-domain collaboration between archaeology and computer science — the latest developments in object detection and Deep Learning — for both natural and satellite imagery — are used to develop an object detection approach, based on the YOLOv4 framework, and modified to the specific task of detecting archaeology in remotely-sensed LiDAR data from the Veluwe (the Netherlands). Experiments show that a general version of the YOLOv4 architecture outperforms current object detection workflows used in archaeology, while the modified version of YOLOv4, geared towards the archaeological task, reaches even higher performance. The research shows the potential and benefit of cross-domain collaboration, where expert knowledge from different research fields is used to create a more reliable detector. 275 Olivier and Verschoof-van der Vaart Journal of Computer Applications in Archaeology DOI: 10.5334/jcaa.78
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在遥感数据中实现最先进的考古目标检测深度学习方法:跨领域协作的结果
与考古有关的遥感数据数量不断增加,使得以人为基础的分析变得不可行,特别是考虑到在这些类型的数据中正确识别结构和物体所需的专业知识。因此,需要一种鲁棒可靠的基于计算机的目标探测器,它不仅能应对遥感数据的独特挑战,而且能应对考古探测任务的独特挑战。在这项研究中——考古学和计算机科学之间的跨领域合作——物体检测和深度学习的最新发展——用于自然和卫星图像——用于开发一种基于YOLOv4框架的物体检测方法,并修改为在Veluwe(荷兰)的遥感激光雷达数据中检测考古的具体任务。实验表明,通用版本的YOLOv4架构优于当前考古学中使用的目标检测工作流,而针对考古任务的修改版本的YOLOv4达到了更高的性能。这项研究显示了跨领域合作的潜力和好处,来自不同研究领域的专家知识被用来创建更可靠的检测器。[5] Olivier and Verschoof-van der Vaart Journal in Archaeology . DOI: 10.5334/jcaa.78
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CiteScore
5.50
自引率
0.00%
发文量
12
审稿时长
19 weeks
期刊最新文献
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