Litcius/Paper detail

DEM Void Filling Based on Context Attention Generation Model

Chunsen Zhang, Shu Shi, Yingwei Ge, Hengheng Liu, Weihong Cui

2020ISPRS International Journal of Geo-Information15 citationsDOIOpen Access PDF

Abstract

The digital elevation model (DEM) generates a digital simulation of ground terrain in a certain range with the usage of 3D point cloud data. It is an important source of spatial modeling information. Due to various reasons, however, the generated DEM has data holes. Based on the algorithm of deep learning, this paper aims to train a deep generation model (DGM) to complete the DEM void filling task. A certain amount of DEM data and a randomly generated mask are taken as network inputs, along which the reconstruction loss and generative adversarial network (GAN) loss are used to assist network training, so as to perceive the overall known elevation information, in combination with the contextual attention layer, and generate data with reliability to fill the void areas. The experimental results have managed to show that this method has good feature expression and reconstruction accuracy in DEM void filling, which has been proven to be better than that illustrated by the traditional interpolation method.

Topics & Concepts

Point cloudDigital elevation modelComputer scienceGenerative adversarial networkDeep learningTerrainVoid (composites)Interpolation (computer graphics)Cloud computingArtificial intelligenceData miningRemote sensingGeologyCartographyMotion (physics)Operating systemMaterials scienceGeographyComposite materialRemote Sensing and LiDAR ApplicationsImage Processing and 3D ReconstructionLandslides and related hazards