A CNN regression model to estimate buildings height maps using Sentinel-1 SAR and Sentinel-2 MSI time series (2307.01378v1)
Abstract: Accurate estimation of building heights is essential for urban planning, infrastructure management, and environmental analysis. In this study, we propose a supervised Multimodal Building Height Regression Network (MBHR-Net) for estimating building heights at 10m spatial resolution using Sentinel-1 (S1) and Sentinel-2 (S2) satellite time series. S1 provides Synthetic Aperture Radar (SAR) data that offers valuable information on building structures, while S2 provides multispectral data that is sensitive to different land cover types, vegetation phenology, and building shadows. Our MBHR-Net aims to extract meaningful features from the S1 and S2 images to learn complex spatio-temporal relationships between image patterns and building heights. The model is trained and tested in 10 cities in the Netherlands. Root Mean Squared Error (RMSE), Intersection over Union (IOU), and R-squared (R2) score metrics are used to evaluate the performance of the model. The preliminary results (3.73m RMSE, 0.95 IoU, 0.61 R2) demonstrate the effectiveness of our deep learning model in accurately estimating building heights, showcasing its potential for urban planning, environmental impact analysis, and other related applications.
- UN, “The sustainable development goals report 2022,” 2022.
- “Understanding current trends in global urbanisation-the world settlement footprint suite,” GI_Forum, 2021.
- “Unsupervised domain adaptation for global urban extraction using sentinel-1 sar and sentinel-2 msi data,” Remote Sensing of Environment, 2022.
- “Continental-scale mapping and analysis of 3d building structure,” Remote Sensing of Environment, 2020.
- “Developing a method to estimate building height from sentinel-1 data,” Remote Sensing of Environment, 2020.
- “World settlement footprint 3d-a first three-dimensional survey of the global building stock,” Remote sensing of environment, 2022.
- “National-scale mapping of building height using sentinel-1 and sentinel-2 time series,” Remote Sensing of Environment, 2021.
- “A first chinese building height estimate at 10 m resolution (cnbh-10 m) using multi-source earth observations and machine learning,” Remote Sensing of Environment, 2023.
- “Google earth engine: Planetary-scale geospatial analysis for everyone,” Remote Sensing of Environment, 2017.
- “Unsupervised flood detection on sar time series,” arXiv preprint arXiv:2212.03675, 2022.
- “Deep learning in remote sensing applications: A meta-analysis and review,” ISPRS journal of photogrammetry and remote sensing, 2019.