We present the data used in "DeepMerge II: Building Robust Deep Learning Algorithms for Merging Galaxy Identification Across Domains". In this paper, we test domain adaptation techniques, such as Maximum Mean Discrepancy (MMD) and adversarial training with Domain Adversarial Neural Networks (DANNs) for cross-domain studies of merging galaxies. Domain adaptation is performed between two simulated datasets of various levels of observational realism (simulation-to-simulation experiments), and between simulated data and observed telescope images (simulation-to-real experiments). For more details about the datasets please see the paper mentioned above. Simulation-to-Simulation Experiments Data used to study distant merging galaxies using simul...
Machine learning is becoming a popular tool to quantify galaxy morphologies and identify mergers. Ho...
International audienceDeep learning (DL) algorithms for morphological classification of galaxies hav...
International audienceEstablishing accurate morphological measurements of galaxies in a reasonable a...
Context. Mergers are an important aspect of galaxy formation and evolution. With large upcoming surv...
With increased adoption of supervised deep learning methods for processing and analysis of cosmologi...
We present the data used in "DeepAdversaries: Examining the Robustness of Deep Learning Models for G...
The deconvolution of large survey images with millions of galaxies requires developing a new generat...
We present the data used in "DeepAstroUDA: Semi-Supervised Universal Domain Adaptation for Cross-Sur...
Being able to distinguish between galaxies that have recently undergone major merger events, or are ...
Being able to distinguish between galaxies that have recently undergone major-merger events, or are ...
We examine the capability of generative models to produce realistic galaxy images. We show that mixi...
We examine the capability of generative models to produce realistic galaxy images. We show that mixi...
We investigate the use of deep convolutional neural networks (deep CNNs) for automatic visual detect...
We present BlendHunter, a proof-of-concept for a deep transfer learning based approach for the autom...
Machine learning is becoming a popular tool to quantify galaxy morphologies and identify mergers. Ho...
International audienceDeep learning (DL) algorithms for morphological classification of galaxies hav...
International audienceEstablishing accurate morphological measurements of galaxies in a reasonable a...
Context. Mergers are an important aspect of galaxy formation and evolution. With large upcoming surv...
With increased adoption of supervised deep learning methods for processing and analysis of cosmologi...
We present the data used in "DeepAdversaries: Examining the Robustness of Deep Learning Models for G...
The deconvolution of large survey images with millions of galaxies requires developing a new generat...
We present the data used in "DeepAstroUDA: Semi-Supervised Universal Domain Adaptation for Cross-Sur...
Being able to distinguish between galaxies that have recently undergone major merger events, or are ...
Being able to distinguish between galaxies that have recently undergone major-merger events, or are ...
We examine the capability of generative models to produce realistic galaxy images. We show that mixi...
We examine the capability of generative models to produce realistic galaxy images. We show that mixi...
We investigate the use of deep convolutional neural networks (deep CNNs) for automatic visual detect...
We present BlendHunter, a proof-of-concept for a deep transfer learning based approach for the autom...
Machine learning is becoming a popular tool to quantify galaxy morphologies and identify mergers. Ho...
International audienceDeep learning (DL) algorithms for morphological classification of galaxies hav...
International audienceEstablishing accurate morphological measurements of galaxies in a reasonable a...