Digital Signal Analysis based on Convolutional Neural Networks for Active Target Time Projection Chambers
@article{Fortino2022DigitalSA, title={Digital Signal Analysis based on Convolutional Neural Networks for Active Target Time Projection Chambers}, author={Giancarlo Fortino and Julio Zamora and L. E. Tamayose and Nina Sumiko Tomita Hirata and V. Guimaraes}, journal={ArXiv}, year={2022}, volume={abs/2202.12941} }
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