A Robust Deep Learning Framework for Prominence Detection through Composite Feature Representations
Harry Birch, St\'ephane R\'egnier, Richard Morton

TL;DR
This paper introduces a robust deep learning framework using composite feature representations for automatic prominence detection in EUV solar images, improving accuracy and generalization for space weather monitoring.
Contribution
The authors develop a novel dataset preprocessing pipeline and composite models that outperform previous methods and generalize across instruments for prominence detection.
Findings
Composite model achieves mAP@50 of 0.749 and 78% recall.
Pipeline corrects instrument degradation for consistent features.
Model generalizes to SUVI data, demonstrating robustness.
Abstract
Solar prominences are dynamic structures suspended within the solar corona and are manifestation of solar activity. Their evolution includes eruptions linked to coronal mass ejections, making their detection critical for space weather monitoring and forecasting. The vast amounts of high-cadence data provided by missions such as SDO/AIA motivate the application of deep learning frameworks capable of assimilating large-scale datasets. However, previous studies have reported poor model performance caused by contamination from hot coronal emission from the EUV HeII 304 {\AA} channel. Using an existing labeled prominence dataset, we find that trained YOLOv5 object detection models exhibit a strong bias towards the 304 {\AA} colormap, rather than physically meaningful prominence features. We develop a further two models comprising three-channel images constructed through an original dataset…
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