Astronomy light curves are sparse, gappy, and heteroscedastic. As a result standard time series methods regularly used for financial and similar datasets are of little help and astronomers are usually left to their own instruments and techniques to classify light curves. A common approach is to derive statistical features from the time series and to use machine learning methods, generally supervised, to separate objects into a few of the standard classes. In this work, we transform the time series to two-dimensional light curve representations in order to classify them using modern deep learning techniques. In particular, we show that convolutional neural networks based classifiers work well for broad characterization and classification. We...
Context. Modern-day time-domain photometric surveys collect a lot of observations of various astrono...
International audienceCosmologists are facing the problem of the analysis of a huge quantity of data...
We introduce a deep machine learning approach to studying quasar microlensing light curves for the f...
Astronomy light curves are sparse, gappy, and heteroscedastic. As a result standard time series meth...
Ongoing or upcoming surveys such as Gaia, ZTF, or LSST will observe the light curves of billions or ...
Abstract This work presents a data-driven method for the classification of light curve measurements...
International audienceAims. The treatment of astronomical image time series has won increasing atten...
The advent of wide-field sky surveys has led to the growth of transient and variable source discover...
Owing to the current and upcoming extensive surveys studying the stellar variability, accurate and q...
We implement two hidden-layer feedforward networks to classify 3011 variable star light curves. Thes...
We apply machine learning techniques in an attempt to predict and classify stellar properties from n...
Given the advancement in optical and imaging technology, new projects in astronomy commonly aim to p...
With the coming data deluge from synoptic surveys, there is a growing need for frameworks that can q...
We present a machine learning package for the classification of periodic variable stars. Our package...
The advent of wide-field sky surveys has led to the growth of transient and variable source discover...
Context. Modern-day time-domain photometric surveys collect a lot of observations of various astrono...
International audienceCosmologists are facing the problem of the analysis of a huge quantity of data...
We introduce a deep machine learning approach to studying quasar microlensing light curves for the f...
Astronomy light curves are sparse, gappy, and heteroscedastic. As a result standard time series meth...
Ongoing or upcoming surveys such as Gaia, ZTF, or LSST will observe the light curves of billions or ...
Abstract This work presents a data-driven method for the classification of light curve measurements...
International audienceAims. The treatment of astronomical image time series has won increasing atten...
The advent of wide-field sky surveys has led to the growth of transient and variable source discover...
Owing to the current and upcoming extensive surveys studying the stellar variability, accurate and q...
We implement two hidden-layer feedforward networks to classify 3011 variable star light curves. Thes...
We apply machine learning techniques in an attempt to predict and classify stellar properties from n...
Given the advancement in optical and imaging technology, new projects in astronomy commonly aim to p...
With the coming data deluge from synoptic surveys, there is a growing need for frameworks that can q...
We present a machine learning package for the classification of periodic variable stars. Our package...
The advent of wide-field sky surveys has led to the growth of transient and variable source discover...
Context. Modern-day time-domain photometric surveys collect a lot of observations of various astrono...
International audienceCosmologists are facing the problem of the analysis of a huge quantity of data...
We introduce a deep machine learning approach to studying quasar microlensing light curves for the f...