Employing Deep Learning to Find Slow Pions in the Pixel Detector in the Belle II Experiment
Category: Master Thesis, Visibility: Public
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| Authors | Johannes Bilk, Jens Lange | 
|---|---|
| Date | 2021-01-01 | 
| Belle II Number | BELLE2-MTHESIS-2021-081 | 
| Abstract | Slow pions (pT<230 MeV/c) are detected and classified based exclisively upon their cluster shape in the PXD, using a neural network (NN) performing image processing. Input to the NN is a 9x9 pixel matrix. ADC values are encoded as grayscale values. The NN uses convolution to encode neighborhood relations in the pixel data. 78% efficiency ("precision") of correct pion identification and 79% rejection of background is achieved. | 
| Conference | Giessen | 
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 latest upload: 2024-12-02