Unsupervised Camouflaged Object Segmentation as Domain Adaptation
Yi Zhang,
Chengyi Wu
Abstract:Deep learning for unsupervised image segmentation remains challenging due to the absence of human labels. The common idea is to train a segmentation head, with the supervision of pixel-wise pseudo-labels generated based on the representation of self-supervised backbones. By doing so, the model performance depends much on the distance between the distribution of target datasets, and the one of backbones ' pre-training dataset (e.g., ImageNet). In this work, we investigate a new task, namely unsupervised camoufl… Show more
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