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RestNet: Boosting Cross-Domain Few-Shot Segmentation with Residual Transformation Network

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Cross-domain few-shot segmentation (CD-FSS) aims to achieve semantic segmentation in previously unseen domains with a limited number of annotated samples. Although existing CD-FSS models focus on cross-domain feature transformation, relying exclusively on inter-domain knowledge transfer may lead to the loss of critical intra-domain information. To this end, we propose a novel residual transformation network (RestNet) that facilitates knowledge transfer while retaining the intra-domain support-query feature information. Specifically, we propose a Semantic Enhanced Anchor Transform (SEAT) module that maps features to a stable domain-agnostic space using advanced semantics. Additionally, an Intra-domain Residual Enhancement (IRE) module is designed to maintain the intra-domain representation of the original discriminant space in the new space. We also propose a mask prediction strategy based on prototype fusion to help the model gradually learn how to segment. Our RestNet can transfer cross-domain knowledge from both inter-domain and intra-domain without requiring additional fine-tuning. Extensive experiments on ISIC, Chest X-ray, and FSS-1000 show that our RestNet achieves state-of-the-art performance. Our code will be available soon.

Xinyang Huang, Chuang Zhu, Wenkai Chen• 2023

Related benchmarks

TaskDatasetResultRank
Semantic segmentationSUIM
mIoU25.2
15
Few-shot Semantic SegmentationCD-FSS 1-shot 1.0 (test)
mIoU (Chest X-ray)70.43
13
Few-shot Semantic SegmentationCD-FSS 5-shot 1.0 (test)
Score (Chest X-ray)73.69
12
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