Archive | March 2026

Revisiting the ESA Euclid Q1 search – What did we miss?

Saamie Vincken and Leon Roman Ecker are sharing an update on the additional subjects you inspected last summer in the ESA Euclid Quicklook-1 (Q1) area. They are finalising the final results and papers that we will share with you as soon as the Euclid Consortium gives us permission. Here’s a taster of what they found and we will share all of the new systems within the next few weeks.

Following the tremendous results from the Euclid Q1 strong lens search, we pored over the data to analyse what we had found, and how we might improve our methods for future searches. We identified two factors – improving our machine learning models even further and adjusting the criteria for choosing which galaxies to search through.

Improving our machine learning model (Saamie): During the initial Q1 lens search, several machine learning models were trained to identify lens candidates. Together with your classifications through Space Warps, we identified 500 strong lens candidates that we reported on here and here. Machine learning models often improve when trained on real data. Therefore, we retrained these models using confirmed Q1 lenses which significantly improved their performance. This iterative retraining will be important for future lens searches – Euclid is expected to reveal over 100,000 lenses over its lifetime, and using likely on-sky examples for retaining and removing as many non-lenses as possible from the dataset will be vital to ensure we can find many lenses as possible. We reapplied one of these networks to the Q1 dataset which identified additional lens candidates that had been missed in the first pass. With one of the improved networks, we repeated the inspection on the same Q1 subset and identified additional candidates that had been missed in the first pass. To ensure these were carefully checked, about 6000 newly flagged subjects were sent to Space Warps. Here are some of the new systems.

Examples of newly identified Grade A lens candidates that were not selected in the original Euclid Q1 search. These systems were recovered through this second stage of visual inspection and show a variety of interesting arrangements, Machine learning models were retrained using likely lens candidates found in the original Space Warps ESA Euclid Q1 search that helped to find what we have missed. Some new candidates that you helped to find are seen edge-on (top- and bottom-right), which make the  features look stretched or unusual compared to more symmetric systems. Others are slightly off-centred (top- and bottom left) in the image, demonstrating that lensing features can still be recognised even when the main galaxy is not perfectly centred. And there are some curious possible lenses like the top middle one. If the blue features are lensed arcs, it’s likely that the two yellowish galaxies are contributing to the lensing potential (the gravitational field that’s distorting the light) and producing these very wide spaced lensed arcs.

Refined selection criteria (Leon): We also discovered gaps in our Q1 galaxy selection – one of the original criteria we used for selecting galaxies that can act as light deflectors in Q1 meant that we overlooked nearby galaxies. These included spiral galaxies which we were keen to inspect – when acting as a lens (deflector), such spiral galaxies can be used as tests for General Relativity. Here are some examples of what we missed because of this.

Examples of lenses (of particular interest edge-on disk galaxy lenses in the top left and bottom right) missed in our original search found in the additional classify sample found by revising the initial galaxy selection. Because we are viewing the stars of the galaxies edge-on, their mass appears stretched into an elongated shape along our line of sight. This allows us to distinguish it from dark matter, which instead appears more evenly distributed and round. These systems were initially missed due to a gap in the Q1 selection criteria which excluded bright and nearby galaxies. Closing this gap and finding more of these edge on systems bring us one step closer in understanding the nature of dark matter and its effect on stars and gas.

We’ve now corrected this error in the Q1 selections so going forward these kinds of galaxies will be included in the future searches.

Both of these adjustments meant that thousands of additional objects were flagged by the discovery systems as potential lenses. These objects were inspected thanks to the amazing efforts of the Space Warps volunteers, contributing to the discovery of over 50 additional promising strong lens candidates missed in the first search. These new systems are especially valuable, as they enrich the diversity of the sample and provide crucial input for retraining machine learning models. For the upcoming Euclid data, this will directly translate into a more complete and reliable identification of the lens population, boosting both the number and the quality of lenses we can uncover. The Space Warps volunteers have played a major role in making this effort a success allowing new mysteries of the Universe to be uncovered. Thank you!!

Upcoming blog posts are on Space Warps Refine, the full samples of new Q1 lenses, and a sneak peek at early results from our recent test search. Please stay tuned!