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Bohao Peng Zhuotao Tian Xiaoyang Wu Chenyao Wang Shu Liu Jingyong Su Jiaya Jia

Abstract
Few-shot semantic segmentation (FSS) aims to form class-agnostic models segmenting unseen classes with only a handful of annotations. Previous methods limited to the semantic feature and prototype representation suffer from coarse segmentation granularity and train-set overfitting. In this work, we design Hierarchically Decoupled Matching Network (HDMNet) mining pixel-level support correlation based on the transformer architecture. The self-attention modules are used to assist in establishing hierarchical dense features, as a means to accomplish the cascade matching between query and support features. Moreover, we propose a matching module to reduce train-set overfitting and introduce correlation distillation leveraging semantic correspondence from coarse resolution to boost fine-grained segmentation. Our method performs decently in experiments. We achieve $50.0\%$ mIoU on \coco~dataset one-shot setting and $56.0\%$ on five-shot segmentation, respectively.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| few-shot-semantic-segmentation-on-coco-20i-1 | HDMNet (ResNet-50) | FB-IoU: 72.2 Mean IoU: 50 |
| few-shot-semantic-segmentation-on-coco-20i-1 | HDMNet (VGG-16) | Mean IoU: 45.9 |
| few-shot-semantic-segmentation-on-coco-20i-5 | HDMNet (VGG-16) | Mean IoU: 52.4 |
| few-shot-semantic-segmentation-on-coco-20i-5 | HDMNet (ResNet-50) | FB-IoU: 77.7 Mean IoU: 56 |
| few-shot-semantic-segmentation-on-pascal-5i-1 | HDMNet (VGG-16) | Mean IoU: 65.1 |
| few-shot-semantic-segmentation-on-pascal-5i-1 | HDMNet (ResNet-50) | Mean IoU: 69.4 |
| few-shot-semantic-segmentation-on-pascal-5i-5 | HDMNet (ResNet-50) | Mean IoU: 71.8 |
| few-shot-semantic-segmentation-on-pascal-5i-5 | HDMNet (VGG-16) | Mean IoU: 69.3 |
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