DeepAdversaries: examining the robustness of deep learning models for galaxy morphology classification
Aleksandra Ćiprijanović(Fermi National Accelerator Laboratory), Stefan M. Wild(Argonne National Laboratory), B. Nord(Fermi National Accelerator Laboratory), Diana Kafkes(Fermi National Accelerator Laboratory), Javier Sánchez(Fermi National Accelerator Laboratory), Gregory F. Snyder(Space Telescope Science Institute), Sandeep Madireddy(Argonne National Laboratory), K. Pedro(Fermi National Accelerator Laboratory), Gabriel Perdue(Fermi National Accelerator Laboratory)
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