Wenjian WangLijuan DuanYuxi WangQing EnJunsong FanZhaoxiang Zhang
Few-shot semantic segmentation intends to predict pixel-level categories using only a few labeled samples. Existing few-shot methods focus primarily on the categories sampled from the same distribution. Nevertheless, this assumption cannot always be ensured. The actual domain shift problem significantly reduces the performance of few-shot learning. To remedy this problem, we propose an interesting and challenging cross-domain few-shot semantic segmentation task, where the training and test tasks perform on different domains. Specifically, we first propose a meta-memory bank to improve the generalization of the segmentation network by bridging the domain gap between source and target domains. The meta-memory stores the intra-domain style information from source domain instances and transfers it to target samples. Subsequently, we adopt a new contrastive learning strategy to explore the knowledge of different categories during the training stage. The negative and positive pairs are obtained from the proposed memory-based style augmentation. Comprehensive experiments demon-strate that our proposed method achieves promising results on cross-domain few-shot semantic segmentation tasks on COCO-20 i , PASCAL-S i , FSS-1000, and SUIM datasets.
Shuo LeiXuchao ZhangJianfeng HeFanglan ChenBowen DuChang‐Tien Lu
Wenjian WangLijuan DuanYuxi WangJunsong FanZhaoxiang Zhang
Zhonghua WuXiangxi ShiGuosheng LinJianfei Cai
Jiangjian XiaoRuiping WangChen HeXilin Chen
Ruixuan LiYuhua LiJintao TongYixiong Zou