In neutron transmission spectroscopic imaging, the transmission spectrum of each pixel on a two-dimensional detector is analyzed and the real-space distribution of microscopic information in an object is visualized with a wide field of view by mapping the obtained parameters. In the analysis of the transmission spectrum, since the spectrum can be classified with certain characteristics, it is possible for machine learning methods to be applied. In this study, we selected the subject of solid-liquid phase fraction imaging as the simplest application of the machine learning method. Firstly, liquid and solid transmission spectra have characteristic shapes, so spectrum classification according to their fraction can be carried out. Unsupervised ...
International audienceNeutron spectrometry is of great significance in different fields as reactors ...
International audienceOrganic scintillators are widely used for neutron/gamma detection. Pulse shape...
Machine learning (ML) methods have proved to be a very successful tool in physical sciences, especia...
In neutron transmission spectroscopic imaging, the transmission spectrum of each pixel on a two-dime...
Direct readability is one advantage of superheated droplet detectors in neutron dosimetry. Utilizing...
Recently, by using deep learning methods, a computer is able to surpass or come close to matching hu...
Since the later 20th century, the search for physics beyond the Standard Model (BSM) has been paramo...
In a measurement of isomeric yield-ratios in fission, the Phase-Imaging Ion-Cyclotron-Resonance tech...
In recent years, articial intelligence techniques have proved to be very successful when applied to ...
A new approach to neutron detection capable of gathering spectroscopic information has been demonstr...
Neutron activation analysis has been widely used for quantitative analysis. It can quantify elements...
Recently, learning algorithms such as Convolutional Neural Networks have been successfully applied i...
The Python package mlreflect is demonstrated, which implements an optimized pipeline for the automat...
In this paper, Machine learning techniques have been employed for preparation and estimation of 96 M...
A new Machine Learning algorithm for shower-head identification in the NeuLAND neutron detector is p...
International audienceNeutron spectrometry is of great significance in different fields as reactors ...
International audienceOrganic scintillators are widely used for neutron/gamma detection. Pulse shape...
Machine learning (ML) methods have proved to be a very successful tool in physical sciences, especia...
In neutron transmission spectroscopic imaging, the transmission spectrum of each pixel on a two-dime...
Direct readability is one advantage of superheated droplet detectors in neutron dosimetry. Utilizing...
Recently, by using deep learning methods, a computer is able to surpass or come close to matching hu...
Since the later 20th century, the search for physics beyond the Standard Model (BSM) has been paramo...
In a measurement of isomeric yield-ratios in fission, the Phase-Imaging Ion-Cyclotron-Resonance tech...
In recent years, articial intelligence techniques have proved to be very successful when applied to ...
A new approach to neutron detection capable of gathering spectroscopic information has been demonstr...
Neutron activation analysis has been widely used for quantitative analysis. It can quantify elements...
Recently, learning algorithms such as Convolutional Neural Networks have been successfully applied i...
The Python package mlreflect is demonstrated, which implements an optimized pipeline for the automat...
In this paper, Machine learning techniques have been employed for preparation and estimation of 96 M...
A new Machine Learning algorithm for shower-head identification in the NeuLAND neutron detector is p...
International audienceNeutron spectrometry is of great significance in different fields as reactors ...
International audienceOrganic scintillators are widely used for neutron/gamma detection. Pulse shape...
Machine learning (ML) methods have proved to be a very successful tool in physical sciences, especia...