Skip to main content
Article
Single-Image Super Resolution using Convolutional Neural Network
Procedia Computer Science
  • William Symolon
  • Cihan H. Dagli, Missouri University of Science and Technology
Abstract

Increasing threats to U.S. national security satellite constellations have resulted in an increased interest in constellation resilience and satellite redundancy. CubeSats have contributed to commercial, scientific and government applications in remote sensing, communications, navigation and research and have the potential to enhance satellite constellation resilience. However, the inherent size, weight and power limitations of CubeSats enforce constraints on imaging hardware; the small lenses and short focal lengths result in imagery with low spatial resolution. Low resolution limits the utility of CubeSat images for military planning purposes and national intelligence applications. This paper implements a super-resolution deep learning architecture and proposes potential applications to CubeSat imagery.

Meeting Name
Complex Adaptive Systems Conference Theme: Big Data, IoT, and AI for a Smarter Future (2021: Jun. 16-18, Malvern, PA)
Department(s)
Engineering Management and Systems Engineering
Keywords and Phrases
  • CNN,
  • CubeSats,
  • Super Resolution
Document Type
Article - Conference proceedings
Document Version
Final Version
File Type
text
Language(s)
English
Rights
© 2021 The Authors, All rights reserved.
Creative Commons Licensing
Creative Commons Attribution-Noncommercial-No Derivative Works 4.0
Publication Date
6-18-2021
Publication Date
18 Jun 2021
Citation Information
William Symolon and Cihan H. Dagli. "Single-Image Super Resolution using Convolutional Neural Network" Procedia Computer Science Vol. 185 (2021) p. 213 - 222 ISSN: 1877-0509
Available at: http://works.bepress.com/cihan-dagli/205/