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Building Footprints

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Fragility, Conflict & SecurityUrban Sustainability Operational Use
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EO Capability Benefits

Satellite data enables us to retrieve information about building footprints, including their heights, locations, and changes. It refines population census data, supports urban planning, and enhances disaster management by informing decision-making processes. Additionally, accurate building data is crucial for risk management, sustainability efforts, and insurance assessments, enabling better responses to natural hazards and the monitoring of the environmental impacts of urbanisation.

EO Capability Description

Advances in AI enable us to use satellite images to identify both 2D and 3D building footprints by classifying each pixel as either a building or non-building. AI-based methods significantly reduce the cost of detecting building locations and heights, but accuracy depends on the quality of satellite imagery (spatial resolution, shadows, cloud cover, etc.) and training data. In some cases, manual corrections are still necessary, which can increase costs. Whether entirely or partially AI-derived, 2D building or building block outlines from Very High-Resolution imagery are represented as vector data, providing a clear representation of building location and geometry.

For some use cases, 3D building footprints (i.e. building footprints with a a numerical height attribute in meters) are required to gain deeper insights into the vertical expansion of cities. Building heights are deduced by capturing the same building or area from multiple (often two or three) angles, making use of the parallax effect. This gives rise to the underlying input data: Multi-Stereo imagery. Both passive optical and active InSAR (Interferometric Synthetic Aperture Radar) can be used as sole inputs or in combination, each with their own set of advantages and challenges.  Shadow length has also been used to obtain additional data on building height. Estimating building height in relation to the ground requires high-quality Digital Surface Models (DSM) and Digital Terrain Models (DTM) to account for terrain relief and surface features, which can be challenging in densely built, undulating areas. Height information is crucial for creating 3D city models, which increasingly inform development control and urban planning allowing us to understand urban density and assess potential risks in rapidly expanding cities. They are also revolutionizing how proposed developments are visualised to create public engagement.

Indicative Cost

0.40€/km²

Building footprint datasets are available for many regions as part of free and open data releases. Regional variability may occur in terms of latency (typically several months to a year after image acquisition) and accuracy. Commercial providers offer on-demand 2D and 3D building footprints with greater control and insights on update frequency, accuracy and additional feature attributes. Pricing is often determined by service providers on a project-by-project basis. Layers indicating the probability of building footprints for each pixel in a VHR image start as low as 0.38 EUR/km² (not including VHR imagery acquisition cost). Derived products indicating clean vector geometries come with an uplift in price. Show more

Relevant EO Technologies
VHR OPTICAL
SAR

Very High Resolution (VHR) optical imagers are passive, nadir‑viewing radiometers that measure reflected solar radiation in a limited set of broad spectral bands, using pushbroom or similar designs to build 2‑D images as the satellite moves along its orbit. Depending on definition, typical spatial resolutions for these systems range from about 5m to less 1m.

Related Training Resources

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