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Self-Erasing Network for Integral Object Attention
[article]
2018
arXiv
pre-print
Recently, adversarial erasing for weakly-supervised object attention has been deeply studied due to its capability in localizing integral object regions. However, such a strategy raises one key problem that attention regions will gradually expand to non-object regions as training iterations continue, which significantly decreases the quality of the produced attention maps. To tackle such an issue as well as promote the quality of object attention, we introduce a simple yet effective
arXiv:1810.09821v1
fatcat:n7ekpypatrhxbdptks7um6vzhi