The Pandora multi-algorithm approach to automated pattern recognition of cosmic-ray muon and neutrino events in the MicroBooNE detector
- Resource Type
- Source
- Springer Berlin Heidelberg
Acciarri, R, Adams, C, An, R, Anthony, J, Asaadi, J, Auger, M, Bagby, L, Balasubramanian, S, Baller, B, Barnes, C, Barr, G, Bass, M, Bay, F, Bishai, M, Blake, A, Bolton, T, Camilleri, L, Caratelli, D, Carls, B, Castillo Fernandez, R, Cavanna, F, Chen, H, Church, E, Cianci, D, Cohen, E, Collin, G H, Conrad, J M, Convery, M, Crespo-Anadón, J I, Del Tutto, M, Devitt, D, Dytman, S, Eberly, B, Ereditato, A, Escudero Sanchez, L, Esquivel, J, Fadeeva, A A, Fleming, B T, Foreman, W, Furmanski, A P, Garcia-Gamez, D, Garvey, G T, Genty, V, Goeldi, D, Gollapinni, S, Graf, N, Gramellini, E, Greenlee, H, Grosso, R, Guenette, R, Hackenburg, A, Hamilton, P, Hen, O, Hewes, J, Hill, C, Ho, J, Horton-Smith, G, Hourlier, A, Huang, E C, James, C, Jan de Vries, J, Jen, C M, Jiang, L, Johnson, R A, Joshi, J, Jostlein, H, Kaleko, D, Karagiorgi, G, Ketchum, W, Kirby, B, Kirby, M, Kobilarcik, T, Kreslo, I, Laube, A, Li, Y, Lister, A, Littlejohn, B R, Lockwitz, S, Lorca, D, Louis, W C, Luethi, M, Lundberg, B, Luo, X, Marchionni, A, Mariani, C, Marshall, J, Martinez Caicedo, D A, Meddage, V, Miceli, T, Mills, G B, Moon, J, Mooney, M, Moore, C D, Mousseau, J, Murrells, R, Naples, D, Nienaber, P, Nowak, J, Palamara, O, Paolone, V, Papavassiliou, V, Pate, S F, Pavlovic, Z, Piasetzky, E, Porzio, D, Pulliam, G, Qian, X, Raaf, J L, Rafique, A, Rochester, L, Rudolf von Rohr, C, Russell, B, Schmitz, D W, Schukraft, A, Seligman, W, Shaevitz, M H, Sinclair, J, Smith, A, Snider, E L, Soderberg, M, Söldner-Rembold, S, Soleti, S R, Spentzouris, P, Spitz, J, St. John, J, Strauss, T, Szelc, A M, Tagg, N, Terao, K, Thomson, M, Toups, M, Tsai, Y T, Tufanli, S, Usher, T, Vandepontseele, W, Vandewater, R G, Viren, B, Weber, M, Wickremasinghe, D A, Wolbers, S, Wongjirad, T, Woodruff, K, Yang, T, Yates, L, Zeller, G P, Zennamo, J & Zhang, C 2018, ' The Pandora multi-algorithm approach to automated pattern recognition of cosmic-ray muon and neutrino events in the MicroBooNE detector ', European Physical Journal C, vol. 78, no. 1, 82 . https://doi.org/10.1140/epjc/s10052-017-5481-6
The European Physical Journal. C, Particles and Fields
European Physical Journal
BASE-Bielefeld Academic Search Engine
European Physical Journal C: Particles and Fields, Vol 78, Iss 1, Pp 1-25 (2018)
Eur. Phys. J. C, 1 (2018) pp. 82
The European Physical Journal C - Subject
Physics and Astronomy (miscellaneous) Exploit Regular Article - Experimental Physics lcsh:Astrophysics computer.software_genre Network topology 01 natural sciences Task (project management) lcsh:QB460-466 0103 physical sciences lcsh:Nuclear and particle physics. Atomic energy. Radioactivity Detectors and Experimental Techniques 010306 general physics Engineering (miscellaneous) QC Physics 010308 nuclear & particles physics business.industry Event (computing) Detector Software development Pattern recognition Advanced software [3] Pattern recognition (psychology) lcsh:QC770-798 Data mining Artificial intelligence Neutrino business computer Algorithm - Language
- ISSN
- 1434-6052
1434-6044