DeepGraviLens: a Multi-Modal Architecture for Classifying Gravitational
Lensing Data
- URL: http://arxiv.org/abs/2205.00701v4
- Date: Fri, 23 Jun 2023 17:13:32 GMT
- Title: DeepGraviLens: a Multi-Modal Architecture for Classifying Gravitational
Lensing Data
- Authors: Nicol\`o Oreste Pinciroli Vago, Piero Fraternali
- Abstract summary: DeepGraviLens is a novel network that classifiestemporal data belonging to one non-lensed system type and three lensed system types.
It surpasses the current state of the art accuracy results by $approx 3%$ to $approx 11%$, depending on the considered data set.
- Score: 3.4138918206057265
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Gravitational lensing is the relativistic effect generated by massive bodies,
which bend the space-time surrounding them. It is a deeply investigated topic
in astrophysics and allows validating theoretical relativistic results and
studying faint astrophysical objects that would not be visible otherwise. In
recent years Machine Learning methods have been applied to support the analysis
of the gravitational lensing phenomena by detecting lensing effects in data
sets consisting of images associated with brightness variation time series.
However, the state-of-art approaches either consider only images and neglect
time-series data or achieve relatively low accuracy on the most difficult data
sets. This paper introduces DeepGraviLens, a novel multi-modal network that
classifies spatio-temporal data belonging to one non-lensed system type and
three lensed system types. It surpasses the current state of the art accuracy
results by $\approx 3\%$ to $\approx 11\%$, depending on the considered data
set. Such an improvement will enable the acceleration of the analysis of lensed
objects in upcoming astrophysical surveys, which will exploit the petabytes of
data collected, e.g., from the Vera C. Rubin Observatory.
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