AFN: Attentional Feedback Network based 3D Terrain Super-Resolution
Abstract
Terrain, representing features of an earth surface, plays a crucial role in many applications such as simulations, route planning, analysis of surface dynamics, computer graphics-based games, entertainment, films, to name a few. With recent advancements in digital technology, these applications demand the presence of high-resolution details in the terrain. In this paper, we propose a novel fully convolutional neural network-based super-resolution architecture to increase the resolution of low-resolution Digital Elevation Model (LRDEM) with the help of information extracted from the corresponding aerial image as a complementary modality. We perform the super-resolution of LRDEM using an attention-based feedback mechanism named 'Attentional Feedback Network' (AFN), which selectively fuses the information from LRDEM and aerial image to enhance and infuse the high-frequency features and to produce the terrain realistically. We compare the proposed architecture with existing state-of-the-art DEM super-resolution methods and show that the proposed architecture outperforms enhancing the resolution of input LRDEM accurately and in a realistic manner.
Cite
@article{arxiv.2010.01626,
title = {AFN: Attentional Feedback Network based 3D Terrain Super-Resolution},
author = {Ashish Kubade and Diptiben Patel and Avinash Sharma and K. S. Rajan},
journal= {arXiv preprint arXiv:2010.01626},
year = {2020}
}
Comments
Accepted as oral at ACCV 2020