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Deep neural network for pixel-level electromagnetic particle identification in the MicroBooNE liquid argon time projection chamber

Title: Deep neural network for pixel-level electromagnetic particle identification in the MicroBooNE liquid argon time projection chamber
Authors: Adams, C; Alrashed, M; An, R; Anthony, J; Asaadi, J; Ashkenazi, A; Auger, M; Balasubramanian, S; Baller, B; Barnes, C; Barr, G; Bass, M; Bay, F; Bhat, A; Bhattacharya, K; Bishai, M; Blake, A; Bolton, T; Camilleri, L; Caratelli, D; Terrazas, IC; Carr, R; Fernandez, RC; Cavanna, F; Cerati, G; Chen, Y; Church, E; Cianci, D; Cohen, EO; Collin, GH; Conrad, JM; Convery, M; Cooper-Troendle, L; Crespo-Anadon, JI; Del Tutto, M; Devitt, D; Diaz, A; Duffy, K; Dytman, S; Eberly, B; Ereditato, A; Sanchez, LE; Esquivel, J; Evans, JJ; Fadeeva, AA; Fitzpatrick, RS; Fleming, BT; Franco, D; Furmanski, AP; Garcia-Gamez, D; Genty, V; Goeldi, D; Gollapinni, S; Goodwin, O; Gramellini, E; Greenlee, H; Grosso, R; Guenette, R; Guzowski, P; Hackenburg, A; Hamilton, P; Hen, O; Hewes, J; Hill, C; Horton-Smith, GA; Hourlier, A; Huang, E-C; James, C; De Vries, JJ; Ji, X; Jiang, L; Johnson, RA; Joshi, J; Jostlein, H; Jwa, Y-J; Karagiorgi, G; Ketchum, W; Kirby, B; Kirby, M; Kobilarcik, T; Kreslo, I; Lepetic, I; Li, Y; Lister, A; Littlejohn, BR; Lockwitz, S; Lorca, D; Louis, WC; Luethi, M; Lundberg, B; Luo, X; Marchionni, A; Marcocci, S; Mariani, C; Marshall, J; Martin-Albo, J; Caicedo, DAM; Mastbaum, A; Meddage, V; Mettler, T; Mistry, K; Mogan, A; Moon, J; Mooney, M; Moore, CD; Mousseau, J; Murphy, M; Murrells, R; Naples, D; Nienaber, P; Nowak, J; Palamara, O; Pandey, V; Paolone, V; Papadopoulou, A; Papavassiliou, V; Pate, SF; Pavlovic, Z; Piasetzky, E; Porzio, D; Pulliam, G; Qian, X; Raaf, JL; Rafique, A; Ren, L; Rochester, L; Ross-Lonergan, M; Von Rohr, CR; Russell, B; Scanavini, G; Schmitz, DW; Schukraft, A; Seligman, W; Shaevitz, MH; Sharankova, R; Sinclair, J; Smith, A; Snider, EL; Soderberg, M; Soldner-Rembold, S; Soleti, SR; Spentzouris, P; Spitz, J; St John, J; Strauss, T; Sutton, K; Sword-Fehlberg, S; Szelc, AM; Tagg, N; Tang, W; Terao, K; Thomson, M; Thornton, RT; Toups, M; Tsai, Y-T; Tufanli, S; Usher, T; Van De Pontseele, W; Van De Water, RG; Viren, B; Weber, M; Wei, H; Wickremasinghe, DA; Wierman, K; Williams, Z; Wolbers, S; Wongjirad, T; Woodruff, K; Yang, T; Yarbrough, G; Yates, LE; Zeller, GP; Zennamo, J; Zhang, C; Collaboration, M
Publisher Information: American Physical Society
Publication Year: 2019
Collection: Oxford University Research Archive (ORA)
Description: We have developed a convolutional neural network that can make a pixel-level prediction of objects in image data recorded by a liquid argon time projection chamber (LArTPC) for the first time. We describe the network design, training techniques, and software tools developed to train this network. The goal of this work is to develop a complete deep neural network based data reconstruction chain for the MicroBooNE detector. We show the first demonstration of a network's validity on real LArTPC data using MicroBooNE collection plane images. The demonstration is performed for stopping muon and a νμ charged-current neutral pion data samples.
Document Type: article in journal/newspaper
Language: unknown
Relation: https://doi.org/10.1103/PhysRevD.99.092001
DOI: 10.1103/PhysRevD.99.092001
Availability: https://doi.org/10.1103/PhysRevD.99.092001; https://ora.ox.ac.uk/objects/uuid:c57cd89d-1ace-4036-ab29-12f34cff23c7
Rights: info:eu-repo/semantics/openAccess ; CC Attribution (CC BY)
Accession Number: edsbas.E849C604
Database: BASE