Publication | Open Access
Deep Learning in Wide-field Surveys: Fast Analysis of Strong Lenses in Ground-based Cosmic Experiments
11
Citations
116
References
2019
Year
Artificial IntelligenceGeometric LearningConvolutional Neural NetworkEngineeringMachine LearningWide-field SurveysDeep Space ProbeData SciencePhysic Aware Machine LearningCosmologyUncertainty QuantificationImage ComplexityAstronomical Image AnalysisMachine VisionDeep Learning FrameworksComputer ScienceDeep LearningComputer VisionStrong Gravitational LensesFast Analysis
Searches and analyses of strong gravitational lenses are challenging due to the rarity and image complexity of these astronomical objects. Next-generation surveys (both ground- and space-based) will provide more opportunities to derive science from these objects, but only if they can be analyzed on realistic time-scales. Currently, these analyses are expensive. In this work, we present a regression analysis with uncertainty estimates using deep learning models to measure four parameters of strong gravitational lenses in simulated Dark Energy Survey data. Using only $gri$-band images, we predict Einstein Radius, lens velocity dispersion, lens redshift to within $10-15\%$ of truth values and source redshift to $30\%$ of truth values, along with predictive uncertainties. This work helps to take a step along the path of faster analyses of strong lenses with deep learning frameworks.
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