Visible to the public Biblio

Filters: Author is Costa, Cliona J  [Clear All Filters]
2022-11-02
Costa, Cliona J, Tiwari, Stuti, Bhagat, Krishna, Verlekar, Akash, Kumar, K M Chaman, Aswale, Shailendra.  2021.  Three-Dimensional Reconstruction of Satellite images using Generative Adversarial Networks. 2021 International Conference on Technological Advancements and Innovations (ICTAI). :121–126.
3D reconstruction has piqued the interest of many disciplines, and many researchers have spent the last decade striving to improve on latest automated three-dimensional reconstruction systems. Three Dimensional models can be utilized to tackle a wide range of visualization problems as well as other activities. In this paper, we have implemented a method of Digital Surface Map (DSM) generation from Aerial images using Conditional Generative Adversarial Networks (c-GAN). We have used Seg-net architecture of Convolutional Neural Network (CNN) to segment the aerial images and then the U-net generator of c-GAN generates final DSM. The dataset we used is ISPRS Potsdam-Vaihingen dataset. We also review different stages if 3D reconstruction and how Deep learning is now being widely used to enhance the process of 3D data generation. We provide binary cross entropy loss function graph to demonstrate stability of GAN and CNN. The purpose of our approach is to solve problem of DSM generation using Deep learning techniques. We put forth our method against other latest methods of DSM generation such as Semi-global Matching (SGM) and infer the pros and cons of our approach. Finally, we suggest improvements in our methods that might be useful in increasing the accuracy.