TL;DR
This paper presents CHRONNOS, a convolutional neural network that automatically detects and segments coronal holes from multi-spectral solar data, achieving high accuracy and real-time performance across the solar cycle.
Contribution
The paper introduces a novel deep learning model for coronal hole detection that outperforms manual labeling in consistency and reliability, using multi-channel solar observations.
Findings
Achieves an IoU of 0.63 with manual labels.
Detects 98.1% of large coronal holes during 2010-2016.
Provides reliable, real-time coronal hole maps across the solar cycle.
Abstract
We develop a reliable, fully automatic method for the detection of coronal holes, that provides consistent full-disk segmentation maps over the full solar cycle and can perform in real-time. We use a convolutional neural network to identify the boundaries of coronal holes from the seven EUV channels of the Atmospheric Imaging Assembly (AIA) as well as from line-of-sight magnetograms from the Helioseismic and Magnetic Imager (HMI) onboard the Solar Dynamics Observatory (SDO). For our primary model (Coronal Hole RecOgnition Neural Network Over multi-Spectral-data; CHRONNOS) we use a progressively growing network approach that allows for efficient training, provides detailed segmentation maps and takes relations across the full solar-disk into account. We provide a thorough evaluation for performance, reliability and consistency by comparing the model results to an independent manually…
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