DSM Building Shape Refinement from Combined Remote Sensing Images based on Wnet-cGANs
2019-03-08Code Available0· sign in to hype
Ksenia Bittner, Marco Körner, Peter Reinartz
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- github.com/0xzayd/Wnet-cGANnone★ 0
Abstract
We describe the workflow of a digital surface models (DSMs) refinement algorithm using a hybrid conditional generative adversarial network (cGAN) where the generative part consists of two parallel networks merged at the last stage forming a WNet architecture. The inputs to the so-called WNet-cGAN are stereo DSMs and panchromatic (PAN) half-meter resolution satellite images. Fusing these helps to propagate fine detailed information from a spectral image and complete the missing 3D knowledge from a stereo DSM about building shapes. Besides, it refines the building outlines and edges making them more rectangular and sharp.