Machine learning-based classification for Single Photon Space Debris Light Curves
Nadine M. Trummer, Amit Reza, Michael A. Steindorfer, Christiane, Helling

TL;DR
This study demonstrates that machine learning models, especially with automated feature extraction, can effectively classify single photon space debris light curves with high accuracy, aiding debris characterization.
Contribution
The paper introduces a machine learning framework with automated feature extraction for classifying single photon space debris light curves, achieving high accuracy and comparing traditional and deep models.
Findings
Achieved up to 90.7% classification accuracy.
Automated feature extraction improves classification performance.
Deep models outperform traditional classifiers in this task.
Abstract
The growing number of man-made debris in Earth's orbit poses a threat to active satellite missions due to the risk of collision. Characterizing unknown debris is, therefore, of high interest. Light Curves (LCs) are temporal variations of object brightness and have been shown to contain information such as shape, attitude, and rotational state. Since 2015, the Satellite Laser Ranging (SLR) group of Space Research Institute (IWF) Graz has been building a space debris LC catalogue. The LCs are captured on a Single Photon basis, which sets them apart from CCD-based measurements. In recent years, Machine Learning (ML) models have emerged as a viable technique for analyzing LCs. This work aims to classify Single Photon Space Debris using the ML framework. We have explored LC classification using k-Nearest Neighbour (k-NN), Random Forest (RDF), XGBoost (XGB), and Convolutional Neural Network…
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Taxonomy
MethodsRandom Convolutional Kernel Transform
