Learning to Generate 3D Representations of Building Roofs Using Single-View Aerial Imagery
Maxim Khomiakov (Technical University of Denmark); Alejandro Valverde Mahou (Technical University of Denmark); Alba Reinders Sánchez (Technical University of Denmark ); Jes Frellsen (Technical University of Denmark); Michael Andersen (Technical University of Denmark)
-
SPS
IEEE Members: $11.00
Non-members: $15.00
We present a novel pipeline for learning the conditional distribution of a building roof mesh given pixels from an aerial image, under the assumption that roof geometry follows a set of
regular patterns. Unlike alternative methods that require multiple images of the same object, our approach enables estimating 3D roof meshes using only a single image for predictions.
The approach employs the PolyGen, a deep generative transformer architecture for 3D meshes. We apply this model in a
new domain and investigate the sensitivity of the image resolution. We propose a novel metric to evaluate the performance
of the inferred meshes, and our results show that the model is
robust even at lower resolutions, while qualitatively producing realistic representations for out-of-distribution samples.