Brandolini Filippo, Domingo-Ribas Guillem, Zerboni Andrea, Turner Sam
McCord Centre for Landscape - School of History, Classics and Archaeology, Newcastle University, UK, Newcastle upon Tyne, NE4 5HP, UK.
Dipartimento di Scienze della Terra "Ardito Desio", Università degli Studi di Milano, Milano, I-20133, Italy.
Open Res Eur. 2021 Sep 3;1:22. doi: 10.12688/openreseurope.13135.2. eCollection 2021.
The necessity of sustainable development for landscapes has emerged as an important theme in recent decades. Current methods take a holistic approach to landscape heritage and promote an interdisciplinary dialogue to facilitate complementary landscape management strategies. With the socio-economic values of the "natural" and "cultural" landscape heritage increasingly recognised worldwide, remote sensing tools are being used more and more to facilitate the recording and management of landscape heritage. The advent of freeware cloud computing services has enabled significant improvements in landscape research allowing the rapid exploration and processing of satellite imagery such as the Landsat and Copernicus Sentinel datasets. This research represents one of the first applications of the Google Earth Engine (GEE) Python application programming interface (API) in studies of historic landscapes. The complete free and open-source software (FOSS) cloud protocol proposed here consists of a Python code script developed in Google Colab, which could be adapted and replicated in different areas of the world. A multi-temporal approach has been adopted to investigate the potential of Sentinel-2 satellite imagery to detect buried hydrological and anthropogenic features along with spectral index and spectral decomposition analysis. The protocol's effectiveness in identifying palaeo-riverscape features has been tested in the Po Plain (N Italy).
近几十年来,景观可持续发展的必要性已成为一个重要主题。当前的方法对景观遗产采取整体方法,并促进跨学科对话,以推动互补的景观管理策略。随着“自然”和“文化”景观遗产的社会经济价值在全球范围内得到越来越多的认可,遥感工具正越来越多地用于促进景观遗产的记录和管理。免费云计算服务的出现使景观研究有了显著改进,能够快速探索和处理诸如陆地卫星和哥白尼哨兵数据集等卫星图像。本研究是谷歌地球引擎(GEE)Python应用程序编程接口(API)在历史景观研究中的首批应用之一。这里提出的完整免费和开源软件(FOSS)云协议由在谷歌Colab中开发的Python代码脚本组成,该脚本可以在世界不同地区进行改编和复制。采用了多时间方法来研究哨兵-2卫星图像检测埋藏的水文和人为特征的潜力,以及光谱指数和光谱分解分析。该协议在识别古河景观特征方面的有效性已在波河平原(意大利北部)进行了测试。