Towards efficient machine-learning-based reduction of the cosmic-ray induced background in X-ray imaging detectors: increasing context awareness
Artem Poliszczuk, Dan Wilkins, Steven W. Allen, Eric D. Miller, Tanmoy, Chattopadhyay, Benjamin Schneider, Julien Eric Darve, Marshall Bautz, Abe, Falcone, Richard Foster, Catherine E. Grant, Sven Herrmann, Ralph Kraft, R., Glenn Morris, Paul Nulsen, Peter Orel

TL;DR
This paper presents a machine learning pipeline that improves cosmic-ray background rejection in X-ray detectors by over 40% while maintaining minimal loss of X-ray signals, addressing limitations of traditional filtering methods.
Contribution
The authors develop a two-stage ML-based method combining neural networks and random forests to enhance cosmic-ray background mitigation in X-ray imaging, leveraging spatial and energy correlations.
Findings
Achieves >40% improvement in background rejection
Maintains <2% loss of X-ray signals
Provides adjustable rejection thresholds for user needs
Abstract
Traditional cosmic ray filtering algorithms used in X-ray imaging detectors aboard space telescopes perform event reconstruction based on the properties of activated pixels above a certain energy threshold, within 3x3 or 5x5 pixel sliding windows. This approach can reject up to 98% of the cosmic ray background. However, the remaining unrejected background constitutes a significant impediment to studies of low surface brightness objects, which are especially prevalent in the high-redshift universe. The main limitation of the traditional filtering algorithms is their ignorance of the long-range contextual information present in image frames. This becomes particularly problematic when analyzing signals created by secondary particles produced during interactions of cosmic rays with body of the detector. Such signals may look identical to the energy deposition left by X-ray photons, when one…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
