Time-domain astronomy has emerged as a vibrant research field in recent years, focusing on celestial objects that exhibit variable magnitudes or positions. Given the urgency of conducting follow-up observations for such objects, the development of an algorithm capable of detecting them and determining their magnitudes and positions has become imperative. Leveraging the advancements in deep neural networks, we present PNet, an end-to-end framework designed not only to detect celestial objects and extract their magnitudes and positions, but also to estimate the photometric uncertainty. PNet comprises two essential steps. First, it detects stars and retrieves their positions, magnitudes, and calibrated magnitudes. Subsequently, in the second p...
In the last decade, the use of neural networks (NN) and of other soft computing methods has begun to...
Astronomy is a branch of science that covers the study and analysis of all extraterrestrial objects ...
It was recently discovered that the expansion of the Universe is accelerating. Type Ia supernovae (S...
Wide field small aperture telescopes (WFSATs) could obtain images of celestial objects with high cad...
Wide field small aperture telescopes (WFSATs) are mainly used to obtain scientific information of po...
Flux is one of the most fundamental parameters in astrophysics, and aperture photometry and point-sp...
We present a new probabilistic method for detecting, deblending, and cataloging astronomical sources...
International audienceThe next generation of astronomical surveys will revolutionize our understandi...
Accurate classification of astronomical objects currently relies on spectroscopic data. Acquiring th...
This thesis explores four projects applying supervised deep learning to help answer astrophysical qu...
Abstract. We present a neural network based approach to the determi-nation of photometric redshift, ...
In future astronomical sky surveys it will be humanly impossible to classify the tens of thousands o...
The search to find answers to the deepest questions we have about the Universe has fueled the collec...
In the last decade, over a million stars were monitored to detect transiting planets. Manual interpr...
Context. Since the advent of modern multiband digital sky surveys, photometric redshifts (photo-z's)...
In the last decade, the use of neural networks (NN) and of other soft computing methods has begun to...
Astronomy is a branch of science that covers the study and analysis of all extraterrestrial objects ...
It was recently discovered that the expansion of the Universe is accelerating. Type Ia supernovae (S...
Wide field small aperture telescopes (WFSATs) could obtain images of celestial objects with high cad...
Wide field small aperture telescopes (WFSATs) are mainly used to obtain scientific information of po...
Flux is one of the most fundamental parameters in astrophysics, and aperture photometry and point-sp...
We present a new probabilistic method for detecting, deblending, and cataloging astronomical sources...
International audienceThe next generation of astronomical surveys will revolutionize our understandi...
Accurate classification of astronomical objects currently relies on spectroscopic data. Acquiring th...
This thesis explores four projects applying supervised deep learning to help answer astrophysical qu...
Abstract. We present a neural network based approach to the determi-nation of photometric redshift, ...
In future astronomical sky surveys it will be humanly impossible to classify the tens of thousands o...
The search to find answers to the deepest questions we have about the Universe has fueled the collec...
In the last decade, over a million stars were monitored to detect transiting planets. Manual interpr...
Context. Since the advent of modern multiband digital sky surveys, photometric redshifts (photo-z's)...
In the last decade, the use of neural networks (NN) and of other soft computing methods has begun to...
Astronomy is a branch of science that covers the study and analysis of all extraterrestrial objects ...
It was recently discovered that the expansion of the Universe is accelerating. Type Ia supernovae (S...