Semi-supervised Learning from Street-View Images and OpenStreetMap for Automatic Building Height Estimation (2307.02574v1)
Abstract: Accurate building height estimation is key to the automatic derivation of 3D city models from emerging big geospatial data, including Volunteered Geographical Information (VGI). However, an automatic solution for large-scale building height estimation based on low-cost VGI data is currently missing. The fast development of VGI data platforms, especially OpenStreetMap (OSM) and crowdsourced street-view images (SVI), offers a stimulating opportunity to fill this research gap. In this work, we propose a semi-supervised learning (SSL) method of automatically estimating building height from Mapillary SVI and OSM data to generate low-cost and open-source 3D city modeling in LoD1. The proposed method consists of three parts: first, we propose an SSL schema with the option of setting a different ratio of "pseudo label" during the supervised regression; second, we extract multi-level morphometric features from OSM data (i.e., buildings and streets) for the purposed of inferring building height; last, we design a building floor estimation workflow with a pre-trained facade object detection network to generate "pseudo label" from SVI and assign it to the corresponding OSM building footprint. In a case study, we validate the proposed SSL method in the city of Heidelberg, Germany and evaluate the model performance against the reference data of building heights. Based on three different regression models, namely Random Forest (RF), Support Vector Machine (SVM), and Convolutional Neural Network (CNN), the SSL method leads to a clear performance boosting in estimating building heights with a Mean Absolute Error (MAE) around 2.1 meters, which is competitive to state-of-the-art approaches. The preliminary result is promising and motivates our future work in scaling up the proposed method based on low-cost VGI data, with possibilities in even regions and areas with diverse data quality and availability.
- Building height estimation in urban areas from very high resolution satellite stereo images. In ISPRS Hannover Workshop, volume 5, pages 2–5, 2009.
- High-resolution air pollution mapping with google street view cars: exploiting big data. Environmental science & technology, 51(12):6999–7008, 2017.
- Predicting building types using openstreetmap. Scientific Reports, 12(1):19976, 2022.
- Estimation of missing building height in OpenStreetMap data: A French case study using GeoClimate 0.0.1. Geoscientific Model Development, 15(19):7505–7532, October 2022. doi:10.5194/gmd-15-7505-2022.
- Global building morphology indicators. Computers, Environment and Urban Systems, 95:101809, 2022.
- Generating 3d city models without elevation data. Computers, Environment and Urban Systems, 64:1–18, 2017.
- Height references of citygml lod1 buildings and their influence on applications. In Proceedings. 9th ISPRS 3DGeoInfo Conference 2014, 11-13 November 2014, Dubai, UAE,(authors version). Citeseer, 2014.
- A deep learning method for building height estimation using high-resolution multi-view imagery over urban areas: A case study of 42 Chinese cities. Remote Sensing of Environment, 264:112590, October 2021. doi:10.1016/j.rse.2021.112590.
- Two- and three-dimensional urban core determinants of the urban heat island: A statistical approach. Journal of Environmental Science and Engineering B, 1(3):363–378, 2012.
- Towards a large-scale 3d modeling of the built environment—joint analysis of tandem-x, sentinel-2 and open street map data. Remote Sensing, 12(15):2391, 2020.
- A three-step approach of simplifying 3d buildings modeled by citygml. International Journal of Geographical Information Science, 26(6):1091–1107, 2012.
- Modelling the world in 3d from vgi/crowdsourced data. European handbook of crowdsourced geographic information, 435, 2016.
- Estimation of building types on openstreetmap based on urban morphology analysis. Connecting a digital Europe through location and place, pages 19–35, 2014.
- Marcus Goetz. Towards generating highly detailed 3d citygml models from openstreetmap. International Journal of Geographical Information Science, 27(5):845–865, 2013.
- ICESat GLAS Data for Urban Environment Monitoring. IEEE Transactions on Geoscience and Remote Sensing, 49(3):1158–1172, March 2011. doi:10.1109/TGRS.2010.2070514.
- Michael F. Goodchild. Citizens as sensors: The world of volunteered geography. GeoJournal, 69:211–221, 08 2007. doi:10.1007/s10708-007-9111-y.
- Geoai: spatially explicit artificial intelligence techniques for geographic knowledge discovery and beyond. International Journal of Geographical Information Science, 34(4):625–636, 2020.
- Self-supervised visual feature learning with deep neural networks: A survey. IEEE transactions on pattern analysis and machine intelligence, 43(11):4037–4058, 2020.
- Citygml–3d city models and their potential for emergency response. In Geospatial information technology for emergency response, pages 273–290. CRC Press, 2008.
- Enhanced facade parsing for street-level images using convolutional neural networks. IEEE Transactions on Geoscience and Remote Sensing, 59(12):10519–10531, 2020.
- Capacities of remote sensing for population estimation in urban areas. Earthquake Hazard Impact and Urban Planning, pages 45–66, 2014.
- Dong-Hyun Lee et al. Pseudo-label: The simple and efficient semi-supervised learning method for deep neural networks. In Workshop on challenges in representation learning, ICML, volume 3, page 896, 2013.
- Exploration of openstreetmap missing built-up areas using twitter hierarchical clustering and deep learning in mozambique. ISPRS Journal of Photogrammetry and Remote Sensing, 166:41–51, 2020.
- Improving openstreetmap missing building detection using few-shot transfer learning in sub-saharan africa. Transactions in GIS, 26(8):3125–3146, 2022.
- Developing a method to estimate building height from Sentinel-1 data. Remote Sensing of Environment, 240:111705, April 2020. doi:10.1016/j.rse.2020.111705.
- IM2ELEVATION: Building Height Estimation from Single-View Aerial Imagery. Remote Sensing, 12(17):2719, January 2020. doi:10.3390/rs12172719.
- Learning from urban form to predict building heights. Plos one, 15(12):e0242010, 2020.
- 3d building reconstruction from single street view images using deep learning. International Journal of Applied Earth Observation and Geoinformation, 112:102859, 2022.
- Creating 3D city models with building footprints and LIDAR point cloud classification: A machine learning approach. Computers, Environment and Urban Systems, 75:76–89, May 2019. doi:10.1016/j.compenvurbsys.2019.01.004.
- Oshdb: a framework for spatio-temporal analysis of openstreetmap history data. Open Geospatial Data, Software and Standards, 4:1–12, 2019.
- Yolov3: An incremental improvement. arXiv preprint arXiv:1804.02767, 2018.
- Impact of urban density and building height on energy use in cities. Energy Procedia, 96:800–814, 2016.
- Large-scale Building Height Estimation from Single VHR SAR image Using Fully Convolutional Network and GIS building footprints. In 2019 Joint Urban Remote Sensing Event (JURSE), pages 1–4, May 2019. doi:10.1109/JURSE.2019.8809037.
- Neural correlates of individual differences in affective benefit of real-life urban green space exposure. Nature neuroscience, 22(9):1389–1393, 2019.
- Quiet route planning for pedestrians in traffic noise polluted environments. IEEE Transactions on Intelligent Transportation Systems, 22(12):7573–7584, 2020.
- Roofpedia: Automatic mapping of green and solar roofs for an open roofscape registry and evaluation of urban sustainability. Landscape and Urban Planning, 214:104167, 2021.
- Object-based image information fusion using multisensor earth observation data over urban areas. International Journal of Image and Data Fusion, 2(2):121–147, 2011.
- A graph convolutional neural network for classification of building patterns using spatial vector data. ISPRS journal of photogrammetry and remote sensing, 150:259–273, 2019.
- Yizhen Yan and Bo Huang. Estimation of building height using a single street view image via deep neural networks. ISPRS Journal of Photogrammetry and Remote Sensing, 192:83–98, October 2022. doi:10.1016/j.isprsjprs.2022.08.006.
- A knowledge transfer approach to map long-term concentrations of hyperlocal air pollution from short-term mobile measurements. Environmental Science & Technology, September 2022. doi:10.1021/acs.est.2c05036.
- Vgi3d: an interactive and low-cost solution for 3d building modelling from street-level vgi images. Journal of Geovisualization and Spatial Analysis, 5(2):1–16, 2021.
- Building Height Extraction from GF-7 Satellite Images Based on Roof Contour Constrained Stereo Matching. Remote Sensing, 14(7):1566, January 2022. doi:10.3390/rs14071566.
- CBHE: Corner-based Building Height Estimation for Complex Street Scene Images. In The World Wide Web Conference, WWW ’19, pages 2436–2447, New York, NY, USA, May 2019. Association for Computing Machinery. doi:10.1145/3308558.3313394.
- Xiaojin Jerry Zhu. Semi-supervised learning literature survey. University of Wisconsin-Madison Department of Computer Sciences, 2005.