International audienceThe rapid and accurate identification of radionuclides brings crucial information for nuclear monitoring to diagnose unknown radiological scenes. Recent studies have used a deep learning approach based on neural networks to develop algorithms that perform well in terms of accuracy and computation time and can also identify radionuclides with a limited number of photons. However, it has been shown that conventional neural networks are not necessarily robust, in the sense that a small particular perturbation of the input data can mislead the networks. A specific learning procedure is necessary to overcome this lack of robustness. In this paper, we show that small perturbations intentionally injected into gamma-ray spectr...
International audienceDiagnostics and monitoring of radiological scenes are critical to the field of...
International audienceDiagnostics and monitoring of radiological scenes are critical to the field of...
Layered Neural Networds, which are a class of models based on neural computation, are applied to the...
International audienceThe rapid and accurate identification of radionuclides brings crucial informat...
International audienceThe rapid and accurate identification of radionuclides brings crucial informat...
International audienceThe rapid and accurate identification of radionuclides brings crucial informat...
International audienceThe rapid and accurate identification of radionuclides brings crucial informat...
Radionuclide identification is an important part of the nuclear material identification system. The ...
We report the implementation of a deep convolutional neural network to train a high-resolution room-...
Current radioisotope identification devices struggle to identify and quantify isotopes in low-resolu...
Current radioisotope identification devices struggle to identify and quantify isotopes in low-resolu...
Improvements in Radio-Isotope IDentification (RIID) algorithms have seen a resurgence in interest wi...
The main focus of this work is to use machine learning and data mining techniques to address some ch...
The main focus of this work is to use machine learning and data mining techniques to address some ch...
International audienceDiagnostics and monitoring of radiological scenes are critical to the field of...
International audienceDiagnostics and monitoring of radiological scenes are critical to the field of...
International audienceDiagnostics and monitoring of radiological scenes are critical to the field of...
Layered Neural Networds, which are a class of models based on neural computation, are applied to the...
International audienceThe rapid and accurate identification of radionuclides brings crucial informat...
International audienceThe rapid and accurate identification of radionuclides brings crucial informat...
International audienceThe rapid and accurate identification of radionuclides brings crucial informat...
International audienceThe rapid and accurate identification of radionuclides brings crucial informat...
Radionuclide identification is an important part of the nuclear material identification system. The ...
We report the implementation of a deep convolutional neural network to train a high-resolution room-...
Current radioisotope identification devices struggle to identify and quantify isotopes in low-resolu...
Current radioisotope identification devices struggle to identify and quantify isotopes in low-resolu...
Improvements in Radio-Isotope IDentification (RIID) algorithms have seen a resurgence in interest wi...
The main focus of this work is to use machine learning and data mining techniques to address some ch...
The main focus of this work is to use machine learning and data mining techniques to address some ch...
International audienceDiagnostics and monitoring of radiological scenes are critical to the field of...
International audienceDiagnostics and monitoring of radiological scenes are critical to the field of...
International audienceDiagnostics and monitoring of radiological scenes are critical to the field of...
Layered Neural Networds, which are a class of models based on neural computation, are applied to the...