Radio Frequency Interference (RFI) corrupts astronomical measurements, thus affecting the performance of radio telescopes. To address this problem, supervised segmentation models have been proposed as candidate solutions to RFI detection. However, the unavailability of large labelled datasets, due to the prohibitive cost of annotating, makes these solutions unusable. To solve these shortcomings, we focus on the inverse problem; training models on only uncontaminated emissions thereby learning to discriminate RFI from all known astronomical signals and system noise. We use Nearest-Latent-Neighbours (NLN) - an algorithm that utilises both the reconstructions and latent distances to the nearest-neighbours in the latent space of generative auto...
International audienceRadio astronomical data are increasingly corrupted by human telecommunication ...
International audienceRadio astronomical data are increasingly corrupted by human telecommunication ...
The search for the answer to one of the most fundamental scientific questions, “How was the universe...
Dataset for training and evaluating the generative novelty detection-based models used for RFI detec...
We present a novel neural network (NN) method for the detection and removal of Radio Frequency Inter...
Radio Frequency Interference (RFI) is a massive problem for radio observatories around the world. Du...
The field of radio frequency interference (RFI) flagging involves the identification of corrupted da...
© 2016 IEEE. We present the application of statistical classifiers to the problem of automatic ident...
Radio frequency interference (RFI) presents a large problem for radio tele- scopes. Interference pr...
Radio frequency interference (RFI) is an ever-present limiting factor among radio telescopes even in...
Radio Frequency Interference (RFI) is a type of inevitable noise in the radio astronomy data collect...
In this work, I describe significant advancements to the signal detection and Radio Frequency Interf...
Modern radio telescopes combine thousands of receivers, long-distance networks, large-scale compute ...
Modern radio astronomy has brought forth an era of data explosion. With advances in instrumentation ...
We apply a Machine Learning technique known as Convolutional Denoising Autoencoder to denoise synthe...
International audienceRadio astronomical data are increasingly corrupted by human telecommunication ...
International audienceRadio astronomical data are increasingly corrupted by human telecommunication ...
The search for the answer to one of the most fundamental scientific questions, “How was the universe...
Dataset for training and evaluating the generative novelty detection-based models used for RFI detec...
We present a novel neural network (NN) method for the detection and removal of Radio Frequency Inter...
Radio Frequency Interference (RFI) is a massive problem for radio observatories around the world. Du...
The field of radio frequency interference (RFI) flagging involves the identification of corrupted da...
© 2016 IEEE. We present the application of statistical classifiers to the problem of automatic ident...
Radio frequency interference (RFI) presents a large problem for radio tele- scopes. Interference pr...
Radio frequency interference (RFI) is an ever-present limiting factor among radio telescopes even in...
Radio Frequency Interference (RFI) is a type of inevitable noise in the radio astronomy data collect...
In this work, I describe significant advancements to the signal detection and Radio Frequency Interf...
Modern radio telescopes combine thousands of receivers, long-distance networks, large-scale compute ...
Modern radio astronomy has brought forth an era of data explosion. With advances in instrumentation ...
We apply a Machine Learning technique known as Convolutional Denoising Autoencoder to denoise synthe...
International audienceRadio astronomical data are increasingly corrupted by human telecommunication ...
International audienceRadio astronomical data are increasingly corrupted by human telecommunication ...
The search for the answer to one of the most fundamental scientific questions, “How was the universe...