2022
DOI: 10.1088/1361-6498/ac1a5c
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Radioactive hot-spot localisation and identification using deep learning

Abstract: The detection of radioactive hot-spots and the identification of the radionuclides present have been a challenge for the security sector, especially in situations involving chemical, biological, radiological, nuclear and explosive threats, as well as naturally occurring radioactive materials. This work proposes a solution based on Machine Learning techniques, with a focus on artificial neural networks (NNs), in order to localise, quantify and identify radioactive sources. Firstly, the created RHLnet model uses… Show more

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Cited by 9 publications
(1 citation statement)
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“…Sometimes these developments have the potential to be applied in areas other than radiological protection. This is true of the study by Mendes et al (2022) that used neural network techniques to locate the number, locations and strengths of sources present in an area. Having located the sources, it was then possible to focus on each one to identify the mix of radionuclides that it comprised.…”
mentioning
confidence: 99%
“…Sometimes these developments have the potential to be applied in areas other than radiological protection. This is true of the study by Mendes et al (2022) that used neural network techniques to locate the number, locations and strengths of sources present in an area. Having located the sources, it was then possible to focus on each one to identify the mix of radionuclides that it comprised.…”
mentioning
confidence: 99%