English

Toward Filament Segmentation Using Deep Neural Networks

Solar and Stellar Astrophysics 2019-12-06 v1 Computer Vision and Pattern Recognition Machine Learning

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 on two years worth of BBSO data, this model is then tested on the three following years. Our case-by-case and overall analyses show that Mask R-CNN can clearly compete with the existing module and in some cases even perform better. Several cases of false positives and false negatives, that are correctly segmented by this model are also shown. The overall advantages of using the proposed model are two-fold: First, deep neural networks' performance generally improves as more annotated data, or better annotations are provided. Second, such a model can be scaled up to detect other solar events, as well as a single multi-purpose module. The results presented in this study introduce a proof of concept in benefits of employing deep neural networks for detection of solar events, and in particular, filaments.

Keywords

Cite

@article{arxiv.1912.02743,
  title  = {Toward Filament Segmentation Using Deep Neural Networks},
  author = {Azim Ahmadzadeh and Sushant S. Mahajan and Dustin J. Kempton and Rafal A. Angryk and Shihao Ji},
  journal= {arXiv preprint arXiv:1912.02743},
  year   = {2019}
}

Comments

10 pages, 10 figures, 1 table, accepted in IEEE BigData 2019

R2 v1 2026-06-23T12:37:14.206Z