Toward Filament Segmentation Using Deep Neural Networks
Azim Ahmadzadeh, Sushant S. Mahajan, Dustin J. Kempton, Rafal A., Angryk, and Shihao Ji

TL;DR
This study demonstrates that Mask R-CNN, a deep neural network, effectively detects solar filaments in H-alpha images, outperforming existing modules and offering scalable, improved solar event detection.
Contribution
The paper introduces the application of Mask R-CNN for solar filament segmentation, showing promising results and potential for broader solar event detection.
Findings
Mask R-CNN competes with and sometimes surpasses existing filament detection modules.
The model performs well on unseen data from subsequent years.
False positives and negatives are effectively segmented by the model.
Abstract
We use a well-known deep neural network framework, called Mask R-CNN, for identification of solar filaments in full-disk H-alpha images from Big Bear Solar Observatory (BBSO). The image data, collected from BBSO's archive, are integrated with the spatiotemporal metadata of filaments retrieved from the Heliophysics Events Knowledgebase (HEK) system. This integrated data is then treated as the ground-truth in the training process of the model. The available spatial metadata are the output of a currently running filament-detection module developed and maintained by the Feature Finding Team; an international consortium selected by NASA. Despite the known challenges in the identification and characterization of filaments by the existing module, which in turn are inherited into any other module that intends to learn from such outputs, Mask R-CNN shows promising results. Trained and validated…
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Taxonomy
TopicsSolar and Space Plasma Dynamics · Solar Radiation and Photovoltaics · Astro and Planetary Science
MethodsRegion Proposal Network · Softmax · Convolution · RoIAlign · Mask R-CNN
