Federico Moscato
AI-based visual pose estimation for space applications.
Rel. Marcello Chiaberge, Andrea Merlo. Politecnico di Torino, Corso di laurea magistrale in Mechatronic Engineering (Ingegneria Meccatronica), 2023
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Abstract
As the number of in-orbit satellites increases, the need for precise pose estimation becomes increasingly critical. Recently the EU funded EROSS, a project with the purpose of providing a new range of services for in orbit satellites with consequent analysis for satellite design and life-cycle management. This initiative aims to enhance the availability of cost-effective and secure orbital services by assessing and validating the essential technological components of the Servicer spacecraft. The incorporation of robotic space technologies working on this project will lead to greater autonomy and safety in executing these services in space, requiring reduced ground-based supervision. This master's thesis presents an innovative approach to pose estimation using deep learning and computer vision techniques.
The research explores the development and implementation of a system for in-orbit satellites pose estimation
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