Quasi Real-Time Autonomous Satellite Detection and Orbit Estimation [IMA]

http://arxiv.org/abs/2304.06227


A method of near real-time detection and tracking of resident space objects (RSOs) using a convolutional neural network (CNN) and linear quadratic estimator (LQE) is proposed. Advances in machine learning architecture allow the use of low-power/cost embedded devices to perform complex classification tasks. In order to reduce the costs of tracking systems, a low-cost embedded device will be used to run a CNN detection model for RSOs in unresolved images captured by a gray-scale camera and small telescope. Detection results computed in near real-time are then passed to an LQE to compute tracking updates for the telescope mount, resulting in a fully autonomous method of optical RSO detection and tracking. Keywords: Space Domain Awareness, Neural Networks, Real-Time, Object Detection, Embedded Systems.

Read this paper on arXiv…

J. Jordan, D. Posada, M. Gillette, et. al.
Fri, 14 Apr 23
25/64

Comments: SPIE Defense and Commercial 2023, Orlando, FL