Tracing Halpha Fibrils through Bayesian Deep Learning
Haodi Jiang, Ju Jing, Jiasheng Wang, Chang Liu, Qin Li, Yan Xu, Jason, T. L. Wang, Haimin Wang

TL;DR
FibrilNet is a Bayesian deep learning tool that accurately traces chromospheric fibrils in Halpha solar images, providing uncertainty quantification and outperforming traditional threshold-based methods in speed and accuracy.
Contribution
This paper introduces FibrilNet, a novel Bayesian deep learning approach for fibril tracing that integrates probabilistic segmentation, uncertainty estimation, and fibril orientation fitting.
Findings
FibrilNet achieves similar fibril detection as traditional methods.
It provides more accurate and smoother fibril orientation angles.
FibrilNet is faster and offers uncertainty maps for confidence assessment.
Abstract
We present a new deep learning method, dubbed FibrilNet, for tracing chromospheric fibrils in Halpha images of solar observations. Our method consists of a data pre-processing component that prepares training data from a threshold-based tool, a deep learning model implemented as a Bayesian convolutional neural network for probabilistic image segmentation with uncertainty quantification to predict fibrils, and a post-processing component containing a fibril-fitting algorithm to determine fibril orientations. The FibrilNet tool is applied to high-resolution Halpha images from an active region (AR 12665) collected by the 1.6 m Goode Solar Telescope (GST) equipped with high-order adaptive optics at the Big Bear Solar Observatory (BBSO). We quantitatively assess the FibrilNet tool, comparing its image segmentation algorithm and fibril-fitting algorithm with those employed by the…
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