Landscape Archaeology Research Group (GIAP), Catalan Institute of Classical Archaeology, 43003 Tarragona, Spain;
Landscape Archaeology Research Group (GIAP), Catalan Institute of Classical Archaeology, 43003 Tarragona, Spain.
Proc Natl Acad Sci U S A. 2020 Aug 4;117(31):18240-18250. doi: 10.1073/pnas.2005583117. Epub 2020 Jul 20.
This paper presents an innovative multisensor, multitemporal machine-learning approach using remote sensing big data for the detection of archaeological mounds in Cholistan (Pakistan). The Cholistan Desert presents one of the largest concentrations of Indus Civilization sites (from 3300 to 1500 BC). Cholistan has figured prominently in theories about changes in water availability, the rise and decline of the Indus Civilization, and the transformation of fertile monsoonal alluvial plains into an extremely arid margin. This paper implements a multisensor, multitemporal machine-learning approach for the remote detection of archaeological mounds. A classifier algorithm that employs a large-scale collection of synthetic-aperture radar and multispectral images has been implemented in Google Earth Engine, resulting in an accurate probability map for mound-like signatures across an area that covers 36,000 km The results show that the area presents many more archaeological mounds than previously recorded, extending south and east into the desert, which has major implications for understanding the archaeological significance of the region. The detection of small (<5 ha) to large mounds (>30 ha) suggests that there were continuous shifts in settlement location. These shifts are likely to reflect responses to a dynamic and changing hydrological network and the influence of the progressive northward advance of the desert in a long-term process that culminated in the abandonment of much of the settled area during the Late Harappan period.
本文提出了一种创新的多传感器、多时相机器学习方法,利用遥感大数据来探测 Cholistan(巴基斯坦)的考古土丘。Cholistan 沙漠是印度文明遗址最集中的地区之一(公元前 3300 年至 1500 年)。Cholistan 在关于水资源可用性变化、印度文明兴衰以及肥沃的季风冲积平原转变为极其干旱边缘的理论中占有重要地位。本文实现了一种多传感器、多时相机器学习方法,用于远程探测考古土丘。在 Google Earth Engine 中实现了一种分类器算法,该算法利用大规模合成孔径雷达和多光谱图像进行数据处理,从而生成了覆盖面积达 36000 平方公里的土丘状特征的精确概率图。结果表明,该地区的考古土丘比之前记录的要多得多,向南和向东延伸到沙漠中,这对理解该地区的考古意义具有重要意义。对小(<5 公顷)到大型土丘(>30 公顷)的探测表明,定居点的位置发生了持续的变化。这些变化可能反映了对动态和变化的水文网络的响应,以及沙漠在长期过程中逐渐向北推进的影响,最终导致在后期哈拉帕时期,大部分定居地区被废弃。