TEGLIE: Transformer encoders as strong gravitational lens finders in KiDS
Margherita Grespan, Hareesh Thuruthipilly, Agnieszka Pollo, Michelle, Lochner, Marek Biesiada, and Verlon Etsebeth

TL;DR
This paper demonstrates that fine-tuning transformer encoders with real augmented images significantly improves gravitational lens detection accuracy in the KiDS survey, leading to the discovery of new strong lens candidates.
Contribution
The study introduces a novel fine-tuning approach using real augmented images to enhance transformer-based gravitational lens detection in large survey data.
Findings
Fine-tuning reduces false positives by 70%.
Approximately 51,000 candidates identified, narrowed down to 264 with 71 high-confidence lenses.
Discovery of 44 new strong gravitational lens candidates.
Abstract
We apply a state-of-the-art transformer algorithm to 221 deg of the Kilo Degree Survey (KiDS) to search for new strong gravitational lenses (SGL). We test four transformer encoders trained on simulated data from the Strong Lens Finding Challenge on KiDS survey data. The best performing model is fine-tuned on real images of SGL candidates identified in previous searches. To expand the dataset for fine-tuning, data augmentation techniques are employed, including rotation, flipping, transposition, and white noise injection. The network fine-tuned with rotated, flipped, and transposed images exhibited the best performance and is used to hunt for SGL in the overlapping region of the Galaxy And Mass Assembly (GAMA) and KiDS surveys on galaxies up to =0.8. Candidate SGLs are matched with those from other surveys and examined using GAMA data to identify blended spectra resulting from the…
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Taxonomy
TopicsComputational Physics and Python Applications · Reservoir Engineering and Simulation Methods · Geophysics and Gravity Measurements
