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DeepC4: Deep Conditional Census-Constrained Clustering for Large-scale Multitask Spatial Disaggregation of Urban Morphology

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To understand our global progress for sustainable development and disaster risk reduction in many developing economies, two recent major initiatives - the Uniform African Exposure Dataset of the Global Earthquake Model (GEM) Foundation and the Modelling Exposure through Earth Observation Routines (METEOR) Project - implemented classical spatial disaggregation techniques to generate large-scale mapping of urban morphology using the information from various satellite imagery and its derivatives, geospatial datasets of the built environment, and subnational census statistics. However, the local discrepancy with well-validated census statistics and the propagated model uncertainties remain a challenge in such coarse-to-fine-grained mapping problems, specifically constrained by weak and conditional label supervision. Therefore, we present Deep Conditional Census-Constrained Clustering (DeepC4), a novel deep learning-based spatial disaggregation approach that incorporates local census statistics as cluster-level constraints while considering multiple conditional label relationships in a joint multitask learning of the patterns of satellite imagery. To demonstrate, compared to GEM and METEOR, we enhanced the quality of Rwandan maps of urban morphology, specifically building exposure and physical vulnerability, at the third-level administrative unit from the 2022 census. As the world approaches the conclusion of many global frameworks in 2030, our work offers a new deep learning-based mapping technique that explicitly encodes well-validated census and experts' belief systems to achieve an explainable and interpretable auditing of existing coarse-grained derived information at large scales.

Joshua Dimasaka, Christian Gei{\ss}, Emily So• 2025

Related benchmarks

TaskDatasetResultRank
Building count estimationRwanda National Building Inventory National level aggregated 2022
Total Building Count3.20e+6
27
Building Height EstimationRwanda building stock
Total Buildings3.20e+6
14
Spatial DisaggregationRwanda Census latest (urban)
Dwelling Count4.35e+5
10
Spatial DisaggregationRwanda Census (Total)
Dwelling Count8.97e+5
10
Spatial DisaggregationRwanda Census (Rural)
Dwelling Count7.06e+5
10
Building count estimationRwanda Census 2022 (National)
Total Building Count3.20e+6
3
Dwelling CountingRwanda Census 2022 (Urban)
Dwelling Count9.82e+5
2
Occupant CountingRwanda Census 2022 (Urban)
Total Occupant Count3.70e+6
2
Building CountingRwanda Census 2022 (Rural)
Building Count2.27e+6
2
Building CountingRwanda Census 2022 (Urban)
Count9.30e+5
2
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