Discriminative out-of-distribution detection for semantic segmentation

ICLR 2019 Petra BevandićIvan KrešoMarin OršićSiniša Šegvić

Most classification and segmentation datasets assume a closed-world scenario in which predictions are expressed as distribution over a predetermined set of visual classes. However, such assumption implies unavoidable and often unnoticeable failures in presence of out-of-distribution (OOD) input... (read more)

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