论文标题

通过完全卷积神经网络从Sentinel-2图像中大规模映射人类定居范围的框架

A framework for large-scale mapping of human settlement extent from Sentinel-2 images via fully convolutional neural networks

论文作者

Qiu, C., Schmitt, M., Geiss, C., Chen, T. K., Zhu, X. X.

论文摘要

人类和解范围(HSE)信息是全球城市化以及人类对自然环境的压力的宝贵指标。因此,映射HSE对于本地,区域甚至全球规模的各种环境问题至关重要。本文提出了一个基于深度学习的框架,该框架使用区域可用的地理产品作为培训标签自动从多光谱Sentinel-2数据映射HSE。实施了直接,简单但有效的完全卷积网络的体系结构SEN2HSE,作为在框架内进行语义细分的示例。该框架已通过在测试区域和OpenStreetMap构建层均匀分布的手动标记的检查点进行验证。与几种基线产品相比,HSE映射结果得到了广泛的比较,以便彻底评估所提出的HSE映射框架的有效性。 HSE映射能力始终在世界各地的10个代表性领域中得到证明。我们还从我们的框架中展示了一个区域尺度和一个全国范围内的HSE映射示例,以展示高尺度的潜力。这项研究的结果有助于将基于CNN的方法用于大规模城市地图的适用性,这些案例无法获得最新和准确的地面真相,以及随后对全球城市化的监视。

Human settlement extent (HSE) information is a valuable indicator of world-wide urbanization as well as the resulting human pressure on the natural environment. Therefore, mapping HSE is critical for various environmental issues at local, regional, and even global scales. This paper presents a deep-learning-based framework to automatically map HSE from multi-spectral Sentinel-2 data using regionally available geo-products as training labels. A straightforward, simple, yet effective fully convolutional network-based architecture, Sen2HSE, is implemented as an example for semantic segmentation within the framework. The framework is validated against both manually labelled checking points distributed evenly over the test areas, and the OpenStreetMap building layer. The HSE mapping results were extensively compared to several baseline products in order to thoroughly evaluate the effectiveness of the proposed HSE mapping framework. The HSE mapping power is consistently demonstrated over 10 representative areas across the world. We also present one regional-scale and one country-wide HSE mapping example from our framework to show the potential for upscaling. The results of this study contribute to the generalization of the applicability of CNN-based approaches for large-scale urban mapping to cases where no up-to-date and accurate ground truth is available, as well as the subsequent monitor of global urbanization.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源