Aachen 2019 –
            
              scientific programme
            
          
        
        
        
        
        
      
      
  
    
  
  T 29: Deep Learning II
  Tuesday, March 26, 2019, 16:00–18:30, H06
  
    
  
  
    
      
        
          
            
              |  | 16:00 | T 29.1 | Reconstruction of Muons with Recurrent Neural Networks for the IceCube Experiment — •Gerrit Wrede, Gisela Anton, and Thorsten Glüsenkamp for the IceCube collaboration | 
        
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              |  | 16:15 | T 29.2 | Antiproton to proton ratio determination using deep neural networks with AMS-02 — •Sichen Li | 
        
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              |  | 16:30 | T 29.3 | Particle Identification using Deep Learning at AMS — •Robin Sonnabend | 
        
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              |  | 16:45 | T 29.4 | Particle Discrimination via Deep Learning with JUNO — •Thilo Birkenfeld, Achim Stahl, and Christopher Wiebusch | 
        
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              |  | 17:00 | T 29.5 | Search for Ultra High Energy Photons with the Pierre Auger Observatory using Deep Learning Techniques — •Tobias Pan, Thomas Bretz, Paulo Ferreira, Adrianna García, Thomas Hebbeker, Julian Kemp, and Christine Peters | 
        
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              |  | 17:15 | T 29.6 | Signal-background discrimination with Deep Learning in the EXO-200 experiment — •Tobias Ziegler, Mike Jewell, Johannes Link, Federico Bontempo, Gisela Anton, and Thilo Michel | 
        
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              |  | 17:30 | T 29.7 | Event Reconstruction with Machine Learning methods in JUNO — •Yu Xu, Yaping Cheng, Christoph Genster, Alexandre Göttel, Livia Ludhova, Philipp Kampmann, Michaela Schever, Achim Stahl, and Christopher Wiebusch | 
        
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              |  | 17:45 | T 29.8 | Application of Deep Neural Networks to Event Type Classification in IceCube — •Maximilian Kronmüller and Theo Glauch for the IceCube collaboration | 
        
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              |  | 18:00 | T 29.9 | Deep Learning based Air Shower Reconstruction at the Pierre Auger Observatory — •Jonas Glombitza, Martin Erdmann, Maximilian Vieweg, and Michael Dohmen | 
        
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              |  | 18:15 | T 29.10 | Image Recognition with Deep Neural Networks for IceAct Air-Cherenkov Telescopes — •Matthias Thiesmeyer, Jan Auffenberg, Pascal Backes, Thomas Bretz, Erik Ganster, Maurice Günder, Merlin Schaufel, Jöran Stettner, and Christopher Wiebusch for the IceCube collaboration | 
        
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