We investigate the use of deep convolutional neural networks (deep CNNs) for automatic visual detection of galaxy mergers. Moreover, we investigate the use of transfer learning in conjunction with CNNs by retraining networks first trained on pictures of everyday objects. We test the hypothesis that transfer learning is useful for improving classification performance for small training sets. This would make transfer learning useful for finding rare objects in astronomical imaging data sets. We find that these deep learning methods perform significantly better than current state-of-the-art merger detection methods based on non-parametric systems such as CAS and GM₂₀. Our method is end-to-end and robust to image noise and distortions; it can b...
International audienceWe present BLENDHUNTER, a proof-of-concept deep-transfer-learning-based approa...
© 2019 The Author(s) Published by Oxford University Press on behalf of the Royal Astronomical Societ...
Context. Galaxy mergers and interactions are an integral part of our basic understanding of how gala...
Context. Mergers are an important aspect of galaxy formation and evolution. With large upcoming surv...
Aims. We present the application of a fully connected neural network (NN) for galaxy merger identifi...
Machine learning is becoming a popular tool to quantify galaxy morphologies and identify mergers. Ho...
Galaxy mergers are dynamic systems that offer us a glimpse into the evolution of the cosmos and the ...
Mergers between galaxies can be drivers of morphological transformation and various physical phenome...
Being able to distinguish between galaxies that have recently undergone major merger events, or are ...
Starburst galaxies are often found to be the result of galaxy mergers. As a result, galaxy mergers a...
Being able to distinguish between galaxies that have recently undergone major-merger events, or are ...
Aims. We aim to perform consistent comparisons between observations and simulations on the mass depe...
We present BlendHunter, a proof-of-concept for a deep transfer learning based approach for the autom...
International audienceWe present BLENDHUNTER, a proof-of-concept deep-transfer-learning-based approa...
© 2019 The Author(s) Published by Oxford University Press on behalf of the Royal Astronomical Societ...
Context. Galaxy mergers and interactions are an integral part of our basic understanding of how gala...
Context. Mergers are an important aspect of galaxy formation and evolution. With large upcoming surv...
Aims. We present the application of a fully connected neural network (NN) for galaxy merger identifi...
Machine learning is becoming a popular tool to quantify galaxy morphologies and identify mergers. Ho...
Galaxy mergers are dynamic systems that offer us a glimpse into the evolution of the cosmos and the ...
Mergers between galaxies can be drivers of morphological transformation and various physical phenome...
Being able to distinguish between galaxies that have recently undergone major merger events, or are ...
Starburst galaxies are often found to be the result of galaxy mergers. As a result, galaxy mergers a...
Being able to distinguish between galaxies that have recently undergone major-merger events, or are ...
Aims. We aim to perform consistent comparisons between observations and simulations on the mass depe...
We present BlendHunter, a proof-of-concept for a deep transfer learning based approach for the autom...
International audienceWe present BLENDHUNTER, a proof-of-concept deep-transfer-learning-based approa...
© 2019 The Author(s) Published by Oxford University Press on behalf of the Royal Astronomical Societ...
Context. Galaxy mergers and interactions are an integral part of our basic understanding of how gala...