International audienceDeep learning (DL) algorithms for morphological classification of galaxies have proven very successful, mimicking (or even improving) visual classifications. However, these algorithms rely on large training samples of labelled galaxies (typically thousands of them). A key question for using DL classifications in future Big Data surveys is how much of the knowledge acquired from an existing survey can be exported to a new data set, i.e. if the features learned by the machines are meaningful for different data. We test the performance of DL models, trained with Sloan Digital Sky Survey (SDSS) data, on Dark Energy Survey (DES) using images for a sample of ∼5000 galaxies with a similar redshift distribution to SDSS. Applyi...
We applied the image-based approach with a convolutional neural network model to the sample of low-r...
In this thesis, we present a complete study of machine learning applications, in- cluding both super...
We consistently analyse for the first time the impact of survey depth and spatial resolution on the ...
International audienceDeep learning (DL) algorithms for morphological classification of galaxies hav...
International audienceWe compare the two largest galaxy morphology catalogues, which separate early ...
We compare the two largest galaxy morphology catalogues, which separate early- and late-type galaxie...
International audienceWe present morphological classifications of ∼27 million galaxies from the Dark...
International audienceWe present a morphological catalogue for ∼670 000 galaxies in the Sloan Digita...
We present Galaxy Zoo DECaLS: detailed visual morphological classifications for Dark Energy Camera L...
There are several supervised machine learning methods used for the application of automated morpholo...
ABSTRACT We present in this paper one of the largest galaxy morphological classification ca...
With increased adoption of supervised deep learning methods for processing and analysis of cosmologi...
Context. Machine learning methods are effective tools in astronomical tasks for classifying objects ...
We applied the image-based approach with a convolutional neural network model to the sample of low-r...
In this thesis, we present a complete study of machine learning applications, in- cluding both super...
We consistently analyse for the first time the impact of survey depth and spatial resolution on the ...
International audienceDeep learning (DL) algorithms for morphological classification of galaxies hav...
International audienceWe compare the two largest galaxy morphology catalogues, which separate early ...
We compare the two largest galaxy morphology catalogues, which separate early- and late-type galaxie...
International audienceWe present morphological classifications of ∼27 million galaxies from the Dark...
International audienceWe present a morphological catalogue for ∼670 000 galaxies in the Sloan Digita...
We present Galaxy Zoo DECaLS: detailed visual morphological classifications for Dark Energy Camera L...
There are several supervised machine learning methods used for the application of automated morpholo...
ABSTRACT We present in this paper one of the largest galaxy morphological classification ca...
With increased adoption of supervised deep learning methods for processing and analysis of cosmologi...
Context. Machine learning methods are effective tools in astronomical tasks for classifying objects ...
We applied the image-based approach with a convolutional neural network model to the sample of low-r...
In this thesis, we present a complete study of machine learning applications, in- cluding both super...
We consistently analyse for the first time the impact of survey depth and spatial resolution on the ...