Euclid: Identification of asteroid streaks in simulated images using deep learning
M. P\"ontinen (1), M. Granvik (1, 2), A. A. Nucita (3, 4, 5),, L. Conversi (6, 7), B. Altieri (7), B. Carry (8), C. M. O'Riordan (9), D., Scott (10), N. Aghanim (11), A. Amara (12), L. Amendola (13), N. Auricchio, (14), M. Baldi (15, 14, 16), D. Bonino (17), E. Branchini (18

TL;DR
This paper presents a deep learning pipeline that significantly improves the detection of asteroid streaks in simulated Euclid space telescope images, enabling detection of fainter objects and increasing overall detection rates.
Contribution
The authors developed a novel three-step deep learning pipeline that outperforms previous non-machine-learning methods in asteroid streak detection in Euclid images.
Findings
Deep learning pipeline surpasses previous methods in completeness.
Able to detect asteroids 0.25-0.5 magnitudes fainter.
Potential to increase detected asteroid count by 50%.
Abstract
Up to 150000 asteroids will be visible in the images of the ESA Euclid space telescope, and the instruments of Euclid offer multiband visual to near-infrared photometry and slitless spectra of these objects. Most asteroids will appear as streaks in the images. Due to the large number of images and asteroids, automated detection methods are needed. A non-machine-learning approach based on the StreakDet software was previously tested, but the results were not optimal for short and/or faint streaks. We set out to improve the capability to detect asteroid streaks in Euclid images by using deep learning. We built, trained, and tested a three-step machine-learning pipeline with simulated Euclid images. First, a convolutional neural network (CNN) detected streaks and their coordinates in full images, aiming to maximize the completeness (recall) of detections. Then, a recurrent neural network…
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