CVAIJul 10, 2025

An Object-Based Deep Learning Approach for Building Height Estimation from Single SAR Images

arXiv:2507.08096v11 citationsh-index: 28Remote Sensing
AI Analysis

This addresses urban monitoring applications by providing automated height estimation, though it shows variability when generalizing across continents.

The paper tackles building height estimation from single very high resolution SAR images using a deep learning approach, achieving a Mean Absolute Error of 2.20 meters in Munich and outperforming state-of-the-art methods in out-of-distribution scenarios.

Accurate estimation of building heights using very high resolution (VHR) synthetic aperture radar (SAR) imagery is crucial for various urban applications. This paper introduces a Deep Learning (DL)-based methodology for automated building height estimation from single VHR COSMO-SkyMed images: an object-based regression approach based on bounding box detection followed by height estimation. This model was trained and evaluated on a unique multi-continental dataset comprising eight geographically diverse cities across Europe, North and South America, and Asia, employing a cross-validation strategy to explicitly assess out-of-distribution (OOD) generalization. The results demonstrate highly promising performance, particularly on European cities where the model achieves a Mean Absolute Error (MAE) of approximately one building story (2.20 m in Munich), significantly outperforming recent state-of-the-art methods in similar OOD scenarios. Despite the increased variability observed when generalizing to cities in other continents, particularly in Asia with its distinct urban typologies and prevalence of high-rise structures, this study underscores the significant potential of DL for robust cross-city and cross-continental transfer learning in building height estimation from single VHR SAR data.

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