Automated Detection of Satellite Trails in Ground-Based Observations Using U-Net and Hough Transform
F. Stoppa, P.J. Groot, R. Stuik, P. Vreeswijk, S. Bloemen, D.L.A., Pieterse, P.A. Woudt

TL;DR
This paper introduces ASTA, a robust automated method combining deep learning and computer vision to detect satellite trails in ground-based astronomical images, improving data quality amid increasing satellite constellations.
Contribution
It presents a novel pipeline using U-Net and Hough Transform for satellite trail detection, trained on high-quality annotated datasets, with validation on large-scale astronomical images.
Findings
High precision and recall in satellite trail detection
Effective identification of previously untracked satellite trails
Validated results through comparison with satellite catalogs
Abstract
The expansion of satellite constellations poses a significant challenge to optical ground-based astronomical observations, as satellite trails degrade observational data and compromise research quality. Addressing these challenges requires developing robust detection methods to enhance data processing pipelines, creating a reliable approach for detecting and analyzing satellite trails that can be easily reproduced and applied by other observatories and data processing groups. Our method, called ASTA (Automated Satellite Tracking for Astronomy), combines deep learning and computer vision techniques for effective satellite trail detection. It employs a U-Net based deep learning network to initially detect trails, followed by a Probabilistic Hough Transform to refine the output. ASTA's U-Net model was trained on a dataset with manually labelled full-field MeerLICHT images prepared using…
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Taxonomy
TopicsImage and Object Detection Techniques · Inertial Sensor and Navigation · Robotic Path Planning Algorithms
