Precise and rapid assessment of seismic damage to buildings is critical for urban regions. To address this challenge, this study proposes QuakeCityNet (QCNet-M-N)- a model with flexible configurations of M encoding stages and N embedding convolution operations for exact pixel-level recognition of earthquake-damaged buildings using unmanned aerial vehicle (UAV) images. A novel loss function, geometric consistency enhanced (GCE) loss, is designed to focus on the building regions and local boundaries, taking into account the geometrical constraints of split line length, curvature, and area. Test results indicate that the proposed QCNet model can achieve robust and stable segmentation accuracy under diverse weather conditions, such as abnormal illumination, rain, and fog. Moreover, the utilization of GCE loss significantly reduces the false-positive small-region noise while preserving overall geometrical shapes. Finally, an application of seismic assessment is conducted in Beichuan county to demonstrate the effectiveness of the proposed method.
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