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Juhong Min Dahyun Kang Minsu Cho

Abstract
Few-shot semantic segmentation aims at learning to segment a target object from a query image using only a few annotated support images of the target class. This challenging task requires to understand diverse levels of visual cues and analyze fine-grained correspondence relations between the query and the support images. To address the problem, we propose Hypercorrelation Squeeze Networks (HSNet) that leverages multi-level feature correlation and efficient 4D convolutions. It extracts diverse features from different levels of intermediate convolutional layers and constructs a collection of 4D correlation tensors, i.e., hypercorrelations. Using efficient center-pivot 4D convolutions in a pyramidal architecture, the method gradually squeezes high-level semantic and low-level geometric cues of the hypercorrelation into precise segmentation masks in coarse-to-fine manner. The significant performance improvements on standard few-shot segmentation benchmarks of PASCAL-5i, COCO-20i, and FSS-1000 verify the efficacy of the proposed method.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| few-shot-semantic-segmentation-on-coco-20i-1 | HSNet (ResNet-50) | FB-IoU: 68.2 Mean IoU: 39.2 learnable parameters (million): 2.5 |
| few-shot-semantic-segmentation-on-coco-20i-1 | HSNet (ResNet-101) | FB-IoU: 69.1 Mean IoU: 41.2 learnable parameters (million): 2.5 |
| few-shot-semantic-segmentation-on-coco-20i-5 | HSNet (ResNet-101) | FB-IoU: 72.4 Mean IoU: 49.5 learnable parameters (million): 2.5 |
| few-shot-semantic-segmentation-on-coco-20i-5 | HSNet (ResNet-50) | FB-IoU: 70.7 Mean IoU: 46.9 learnable parameters (million): 2.5 |
| few-shot-semantic-segmentation-on-fss-1000-1 | HSNet (VGG-16) | Mean IoU: 82.3 |
| few-shot-semantic-segmentation-on-fss-1000-1 | HSNet (ResNet-101) | Mean IoU: 86.5 |
| few-shot-semantic-segmentation-on-fss-1000-1 | HSNet (ResNet-50) | Mean IoU: 85.5 |
| few-shot-semantic-segmentation-on-fss-1000-5 | HSNet (ResNet-50) | Mean IoU: 87.8 |
| few-shot-semantic-segmentation-on-fss-1000-5 | HSNet (VGG-16) | Mean IoU: 85.8 |
| few-shot-semantic-segmentation-on-fss-1000-5 | HSNet (ResNet-101) | Mean IoU: 88.5 |
| few-shot-semantic-segmentation-on-pascal-5i-1 | HSNet (ResNet-50) | FB-IoU: 76.7 Mean IoU: 64.0 learnable parameters (million): 2.5 |
| few-shot-semantic-segmentation-on-pascal-5i-1 | HSNet (ResNet-101) | FB-IoU: 77.6 Mean IoU: 66.2 learnable parameters (million): 2.5 |
| few-shot-semantic-segmentation-on-pascal-5i-1 | HSNet (VGG-16) | FB-IoU: 73.4 Mean IoU: 59.7 |
| few-shot-semantic-segmentation-on-pascal-5i-5 | HSNet (ResNet-101) | FB-IoU: 80.6 Mean IoU: 70.4 learnable parameters (million): 2.5 |
| few-shot-semantic-segmentation-on-pascal-5i-5 | HSNet (VGG-16) | FB-IoU: 76.6 Mean IoU: 64.1 |
| few-shot-semantic-segmentation-on-pascal-5i-5 | HSNet (ResNet-50) | FB-IoU: 80.6 Mean IoU: 69.5 learnable parameters (million): 2.5 |
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