利用机器学习和低分辨率多光谱数据绘制发展中国家非正式住区地图

Bradley Gram-Hansen, P. Helber, I. Varatharajan, F. Azam, Alejandro Coca-Castro, V. Kopačková, P. Bilinski
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引用次数: 40

摘要

非正式住区是地球上社会和经济上最脆弱的人的家园。为了提供有效的经济和社会援助,诸如联合国儿童基金会(儿童基金会)等非政府组织需要非正式住区地点的详细地图。但是,关于非正式和正式住区的数据主要是没有的,即使有也往往是不完整的。这在一定程度上是由于大规模收集数据的成本和复杂性。为了应对这些挑战,我们在这项工作中提供了三点贡献。1)专门为非正式定居点检测开发的全新机器学习数据集。2)我们表明,使用免费的低分辨率(LR)数据可以检测非正式定居点,而不是使用非常高分辨率(VHR)卫星和航空图像,这对非政府组织来说是成本过高的。3)我们在整理的数据集上展示了两种有效的分类方案,一种对非政府组织来说具有成本效益,另一种对非政府组织来说成本过高,但具有额外的效用。我们将这些方案整合到一个半自动化的管道中,将LR或VHR卫星图像转换为二进制地图,对非正式定居点的位置进行编码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping Informal Settlements in Developing Countries using Machine Learning and Low Resolution Multi-spectral Data
Informal settlements are home to the most socially and economically vulnerable people on the planet. In order to deliver effective economic and social aid, non-government organizations (NGOs), such as the United Nations Children's Fund (UNICEF), require detailed maps of the locations of informal settlements. However, data regarding informal and formal settlements is primarily unavailable and if available is often incomplete. This is due, in part, to the cost and complexity of gathering data on a large scale. To address these challenges, we, in this work, provide three contributions. 1) A brand new machine learning dataset purposely developed for informal settlement detection. 2) We show that it is possible to detect informal settlements using freely available low-resolution (LR) data, in contrast to previous studies that use very-high resolution~(VHR) satellite and aerial imagery, something that is cost-prohibitive for NGOs. 3) We demonstrate two effective classification schemes on our curated data set, one that is cost-efficient for NGOs and another that is cost-prohibitive for NGOs, but has additional utility. We integrate these schemes into a semi-automated pipeline that converts either a LR or VHR satellite image into a binary map that encodes the locations of informal settlements.
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