Analytical techniques have been used for many years for fitting Gaussian peaks in nuclear spectroscopy. However, the complexity of the approach warrants looking for machine-learning alternatives where intensive computations are required only once (during training), while actual analysis on individual spectra is greatly simplified and quickened. This should allow the use of simple portable systems for fast and automated analysis of large numbers of spectra, particularly in situations where accuracy may be traded for speed and simplicity. This paper proposes the use of abductive networks machine learning for this purpose. The Abductory Induction Mechanism (AIM) tool was used to build models for analyzing both single and double Gaussian peaks ...
Nuclear magnetic resonance (NMR) spectroscopy is emerging as one of the most powerful tools for the ...
This thesis studies the performance of statistical learning methods in high energy and astrophysics...
The quality of the spectral data collected by radiological survey systems depends on many factors in...
Analytical techniques have been used for many years for fitting Gaussian peaks in nuclear spectrosco...
We explore the possibility of using machine learning to estimate physical parameters directly from a...
The quantitative issue of artificial neural nrtworks ( ANN) had been addressed by using examples o...
Current radioisotope identification devices struggle to identify and quantify isotopes in low-resolu...
The usual approach to laser-induced breakdown spectroscopy (LIBS) quantitative analysis is based on ...
Special spectrum regions, like around the annihilation peak at 511 keV, the boron peak at 478 keV, t...
International audienceLayered Neural Networks are a class of models based on neural computation and ...
The main focus of this work is to use machine learning and data mining techniques to address some ch...
I have for this thesis worked on automating the steps in evaluating wavelength spectra from quartz. ...
Magnetic resonance imaging (MRI) is widely used as a non-invasive diagnostic technique to visualize ...
We present a new algorithm, named Autonomous Gaussian Decomposition (AGD), for automatically decompo...
Infrared absorption spectroscopy is a widely used tool to quantify and monitor compositions of gases...
Nuclear magnetic resonance (NMR) spectroscopy is emerging as one of the most powerful tools for the ...
This thesis studies the performance of statistical learning methods in high energy and astrophysics...
The quality of the spectral data collected by radiological survey systems depends on many factors in...
Analytical techniques have been used for many years for fitting Gaussian peaks in nuclear spectrosco...
We explore the possibility of using machine learning to estimate physical parameters directly from a...
The quantitative issue of artificial neural nrtworks ( ANN) had been addressed by using examples o...
Current radioisotope identification devices struggle to identify and quantify isotopes in low-resolu...
The usual approach to laser-induced breakdown spectroscopy (LIBS) quantitative analysis is based on ...
Special spectrum regions, like around the annihilation peak at 511 keV, the boron peak at 478 keV, t...
International audienceLayered Neural Networks are a class of models based on neural computation and ...
The main focus of this work is to use machine learning and data mining techniques to address some ch...
I have for this thesis worked on automating the steps in evaluating wavelength spectra from quartz. ...
Magnetic resonance imaging (MRI) is widely used as a non-invasive diagnostic technique to visualize ...
We present a new algorithm, named Autonomous Gaussian Decomposition (AGD), for automatically decompo...
Infrared absorption spectroscopy is a widely used tool to quantify and monitor compositions of gases...
Nuclear magnetic resonance (NMR) spectroscopy is emerging as one of the most powerful tools for the ...
This thesis studies the performance of statistical learning methods in high energy and astrophysics...
The quality of the spectral data collected by radiological survey systems depends on many factors in...