Pyramid Graph Networks With Connection Attentions for Region-Based One-Shot Semantic Segmentation
@article{Zhang2019PyramidGN, title={Pyramid Graph Networks With Connection Attentions for Region-Based One-Shot Semantic Segmentation}, author={Chi Zhang and Guosheng Lin and Fayao Liu and Jiushuang Guo and Qingyao Wu and Rui Yao}, journal={2019 IEEE/CVF International Conference on Computer Vision (ICCV)}, year={2019}, pages={9586-9594} }
One-shot image segmentation aims to undertake the segmentation task of a novel class with only one training image available. The difficulty lies in that image segmentation has structured data representations, which yields a many-to-many message passing problem. Previous methods often simplify it to a one-to-many problem by squeezing support data to a global descriptor. However, a mixed global representation drops the data structure and information of individual elements. In this paper, we… CONTINUE READING
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