Feb. 1, 2024, 12:42 p.m. | Chaohua Li Enhao Zhang Chuanxing Geng SongCan Chen

cs.CV updates on arXiv.org arxiv.org

In open-set recognition (OSR), a promising strategy is exploiting pseudo-unknown data outside given $K$ known classes as an additional $K$+$1$-th class to explicitly model potential open space. However, treating unknown classes without distinction is unequal for them relative to known classes due to the category-agnostic and scale-agnostic of the unknowns. This inevitably not only disrupts the inherent distributions of unknown classes but also incurs both class-wise and instance-wise imbalances between known and unknown classes. Ideally, the OSR problem should model …

beings class cs.cv data recognition scale set space strategy them

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