DAWIS, a Detection Algorithm with Wavelets for Intracluster light Studies
A. Ellien, E. Slezak, N. Martinet, F. Durret, C. Adami, R. Gavazzi, C., R. Raba\c{c}a, C. Da Rocha, D. N. Epit\'acio Pereira

TL;DR
DAWIS is a wavelet-based detection algorithm optimized for identifying low surface brightness intracluster light in galaxy cluster images, outperforming traditional methods in simulations and real data.
Contribution
This paper introduces DAWIS, a novel wavelet-based multiresolution algorithm for detecting intracluster light, improving detection efficiency and flux measurement accuracy.
Findings
DAWIS detects more ICL flux than traditional methods in simulations.
DAWIS identifies faint, extended sources in real galaxy cluster images.
ICL fraction measurements are biased by observational factors.
Abstract
Large amounts of deep optical images will be available in the near future, allowing statistically significant studies of low surface brightness structures such as intracluster light (ICL) in galaxy clusters. The detection of these structures requires efficient algorithms dedicated to this task, where traditional methods suffer difficulties. We present our new Detection Algorithm with Wavelets for Intracluster light Studies (DAWIS), developed and optimised for the detection of low surface brightness sources in images, in particular (but not limited to) ICL. DAWIS follows a multiresolution vision based on wavelet representation to detect sources, embedded in an iterative procedure called synthesis-by-analysis approach to restore the complete unmasked light distribution of these sources with very good quality. The algorithm is built so sources can be classified based on criteria depending…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
