Automation of the filament tracking in the framework of the HELIO project
Xavier Bonnin, Jean Aboudarham, Nicolas Fuller, Andre Csillaghy,, Robert D. Bentley

TL;DR
This paper introduces an automated method for tracking solar filaments across the solar disk using image processing, co-rotating reference frames, and curve-matching algorithms, validated against manual tracking and applied within the HELIO project.
Contribution
The paper presents a novel automated filament tracking technique combining image segmentation, co-rotating reference frames, and shape comparison, improving large-scale solar feature cataloging.
Findings
High agreement between automated and manual tracking results
Method successfully applied within the HELIO framework
Potential extension to other solar features
Abstract
We present a new method to automatically track filaments over the solar disk. The filaments are first detected on Meudon Spectroheliograph H{\alpha} images of the Sun, applying the technique developed by Fuller, Aboudarham, and Bentley (Solar phys. 227, 61, 2005). This technique combines cleaning processes, image segmentation based on region growing, and morphological parameter ex- traction, including the determination of filament skeletons. The coordinates of the skeleton pixels, given in a heliocentric system, are then converted to a more appropriate reference frame that follows the rotation of the Sun surface. In such a frame, a co-rotating filament is always located around the same position, and its skeletons (extracted from each image) are thus spatially close, forming a group of adjacent features. In a third step, the shape of each skeleton is compared with its neighbours using a…
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