Precise prediction of the radiation interaction position in scintillators plays an important role in medical and industrial imaging systems. In this research, the incident position of the gamma rays was predicted precisely in a plastic rod scintillator by using attenuation technique and multilayer perceptron (MLP) neural network, for the first time. Also, this procedure was performed using nonlinear regression (NLR) method. The experimental setup is comprised of a plastic rod scintillator (BC400) coupled with two PMTs at two sides, a 60Co gamma source and two counters that record count rates. Using two proposed techniques (ANN and NLR), the radiation interaction position was predicted in a plastic rod scintillator with a mean relative error...
An artificial neural network (ANN) model was used for the prediction of peak-to-background ratio (PB...
The study and application of AI algorithms for photon interaction position reconstruction in a 3-inc...
Existing applications of artificial neural networks in physics research and development have been an...
In this study, one-dimensional gamma ray source positions are estimated using a plastic scintillatin...
The reconstruction of the position of interaction in thick, monolithic scintillator crystals is a fu...
To detect gamma rays with good spatial, timing and energy resolution while maintaining high sensitiv...
In this research the effectiveness of analytical neural networks compared to the maximum likelihood ...
We present an analog ASIC implementing a neural network (NN) in charge domain for estimating the pos...
In this work, we present the development and application of a convolutional neural network (CNN)-bas...
PET-detectors based on monolithic scintillator blocks have the potential to significantly improve th...
International audienceGamma-ray astronomy in the energy range from 0.1 up to 100 MeV holds many unde...
In a typical monolithic PET detector setup, scintillation light is captured by an array of photodete...
This work presents the experimental results for the position estimation of the interaction point of...
An artificial neural network (ANN) model for the prediction of measuring uncertainties in gamma-ray ...
Radioactive particle tracking (RPT) is a minimally invasive nuclear technique that tracks a radioact...
An artificial neural network (ANN) model was used for the prediction of peak-to-background ratio (PB...
The study and application of AI algorithms for photon interaction position reconstruction in a 3-inc...
Existing applications of artificial neural networks in physics research and development have been an...
In this study, one-dimensional gamma ray source positions are estimated using a plastic scintillatin...
The reconstruction of the position of interaction in thick, monolithic scintillator crystals is a fu...
To detect gamma rays with good spatial, timing and energy resolution while maintaining high sensitiv...
In this research the effectiveness of analytical neural networks compared to the maximum likelihood ...
We present an analog ASIC implementing a neural network (NN) in charge domain for estimating the pos...
In this work, we present the development and application of a convolutional neural network (CNN)-bas...
PET-detectors based on monolithic scintillator blocks have the potential to significantly improve th...
International audienceGamma-ray astronomy in the energy range from 0.1 up to 100 MeV holds many unde...
In a typical monolithic PET detector setup, scintillation light is captured by an array of photodete...
This work presents the experimental results for the position estimation of the interaction point of...
An artificial neural network (ANN) model for the prediction of measuring uncertainties in gamma-ray ...
Radioactive particle tracking (RPT) is a minimally invasive nuclear technique that tracks a radioact...
An artificial neural network (ANN) model was used for the prediction of peak-to-background ratio (PB...
The study and application of AI algorithms for photon interaction position reconstruction in a 3-inc...
Existing applications of artificial neural networks in physics research and development have been an...