We present DECORAS, a deep-learning-based approach to detect both point and extended sources from Very Long Baseline Interferometry (VLBI) observations. Our approach is based on an encoder-decoder neural network architecture that uses a low number of convolutional layers to provide a scalable solution for source detection. In addition, DECORAS performs source characterization in terms of the position, effective radius, and peak brightness of the detected sources. We have trained and tested the network with images that are based on realistic Very Long Baseline Array (VLBA) observations at 20 cm. Also, these images have not gone through any prior de-convolution step and are directly related to the visibility data via a Fourier transform. We f...
Modern radio astronomy has brought forth an era of data explosion. With advances in instrumentation ...
Radio frequency interference (RFI) is an ever-present limiting factor among radio telescopes even in...
Modern radio telescopes combine thousands of receivers, long-distance networks, large-scale compute ...
We present DECORAS, a deep-learning-based approach to detect both point and extended sources from Ve...
We present DECORAS, a deep-learning-based approach to detect both point and extended sources from Ve...
We present DECORAS, a deep learning based approach to detect both point and extended sources from Ve...
In this paper we introduce a reliable, fully automated and fast algorithm to detect extended extraga...
This thesis has addressed several challenges of the big data era in the field of high angular-resolu...
We present a deep learning (DL) pipeline developed for the detection and characterization of astrono...
Context. Rising interest in radio astronomy and upcoming projects in the field is expected to produc...
We present a Deep-Learning (DL) pipeline developed for the detection and characterization of astrono...
Context. Radio astronomy is currently thriving with new large ground-based radio telescopes coming o...
Context. The sparse layouts of radio interferometers result in an incomplete sampling of the sky in ...
International audienceContext. At GeV energies, the sky is dominated by the interstellar emission fr...
We apply a Machine Learning technique known as Convolutional Denoising Autoencoder to denoise synthe...
Modern radio astronomy has brought forth an era of data explosion. With advances in instrumentation ...
Radio frequency interference (RFI) is an ever-present limiting factor among radio telescopes even in...
Modern radio telescopes combine thousands of receivers, long-distance networks, large-scale compute ...
We present DECORAS, a deep-learning-based approach to detect both point and extended sources from Ve...
We present DECORAS, a deep-learning-based approach to detect both point and extended sources from Ve...
We present DECORAS, a deep learning based approach to detect both point and extended sources from Ve...
In this paper we introduce a reliable, fully automated and fast algorithm to detect extended extraga...
This thesis has addressed several challenges of the big data era in the field of high angular-resolu...
We present a deep learning (DL) pipeline developed for the detection and characterization of astrono...
Context. Rising interest in radio astronomy and upcoming projects in the field is expected to produc...
We present a Deep-Learning (DL) pipeline developed for the detection and characterization of astrono...
Context. Radio astronomy is currently thriving with new large ground-based radio telescopes coming o...
Context. The sparse layouts of radio interferometers result in an incomplete sampling of the sky in ...
International audienceContext. At GeV energies, the sky is dominated by the interstellar emission fr...
We apply a Machine Learning technique known as Convolutional Denoising Autoencoder to denoise synthe...
Modern radio astronomy has brought forth an era of data explosion. With advances in instrumentation ...
Radio frequency interference (RFI) is an ever-present limiting factor among radio telescopes even in...
Modern radio telescopes combine thousands of receivers, long-distance networks, large-scale compute ...