Every year, municipalities around the world lose millions in property tax revenue — not because residents are refusing to pay, but because many buildings are simply invisible to tax authorities. Unregistered constructions, undeclared expansions and outdated cadastral records are widespread, especially in rapidly growing urban and peri-urban areas. In some regions, entire neighborhoods have sprung up without a trace in official databases. As a result, property tax collection remains inaccurate and unfair, and public budgets suffer. This situation, however, is changing, thanks to advances in satellite Earth Observation (EO) and artificial intelligence (AI).
Today, very high-resolution (VHR) optical satellites like Maxar’s WorldView, Airbus’s Pléiades Neo, or PlanetScope are capable of capturing ground-level detail at 30–50 centimeters per pixel. With such imagery, individual buildings and even small annexes or outbuildings are clearly visible. But having images is only the beginning. The real power comes from automated analysis. Deep learning algorithms - particularly convolutional neural networks trained on thousands of satellite images - can now accurately detect building footprints. These models analyze roof shapes, spectral reflectance, shadows and surrounding patterns to delineate building outlines with impressive precision.
Once detected, the extracted building footprints are compared with cadastral data or land parcel records. This overlay analysis reveals discrepancies: buildings visible on imagery but missing from official registers are flagged for inspection. Authorities can then verify these cases on the ground or, increasingly, by using additional remote sensing data. The impact of such systems is already visible around the world. In France, for instance, satellite analysis uncovered thousands of undeclared swimming pools, resulting in €10 million in additional tax revenue in just one year. Meanwhile, institutions like the Asian Development Bank are promoting the adoption of EO-based property auditing in developing countries, recognizing its potential to strengthen urban governance and fiscal health.
The use of satellite-based building detection is not just about boosting revenue. Accurate and up-to-date building data support better city planning, more equitable service delivery, and stronger disaster response. Governments can allocate resources based on real, observed land use rather than outdated or incomplete records. At the same time, ensuring everyone pays their fair share of taxes improves trust in public institutions and helps reduce corruption.
Of course, the technology isn’t flawless. Shadows, tree cover and dense urban morphology can challenge even the best AI models. Legal boundaries rarely align perfectly with physical footprints and the material or condition of roofs can complicate classification. Still, with the integration of auxiliary data — such as LIDAR, aerial imagery, or even Google Street View, detection accuracy improves dramatically. Some companies, like Tensorflight, are already combining these sources to offer ready-to-use property intelligence services for insurers and local governments.
As costs of satellite data continue to fall and cloud computing platforms make analysis more accessible, the future of cadastral intelligence looks increasingly automated. Cities and regions can expect to maintain near real-time property records, updated directly from space. In this new paradigm, urban change no longer needs to wait for field surveys or paper filings. Instead, buildings will be tracked, categorized, and valued using satellite pixels and neural networks.
The implications of this shift are profound. Satellite imagery and AI are not just enhancing how we see the Earth — they are changing how we govern it. By bringing transparency to property ownership and land use, Earth Observation technologies can help build fairer, smarter and more resilient communities. And perhaps most importantly, they ensure that no building — and no taxpayer — stays hidden for long.