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Papers/Prior Guided Feature Enrichment Network for Few-Shot Segme...

Prior Guided Feature Enrichment Network for Few-Shot Segmentation

Zhuotao Tian, Hengshuang Zhao, Michelle Shu, Zhicheng Yang, Ruiyu Li, Jiaya Jia

2020-08-04Few-Shot Semantic SegmentationSemantic Segmentation
PaperPDFCodeCode(official)Code

Abstract

State-of-the-art semantic segmentation methods require sufficient labeled data to achieve good results and hardly work on unseen classes without fine-tuning. Few-shot segmentation is thus proposed to tackle this problem by learning a model that quickly adapts to new classes with a few labeled support samples. Theses frameworks still face the challenge of generalization ability reduction on unseen classes due to inappropriate use of high-level semantic information of training classes and spatial inconsistency between query and support targets. To alleviate these issues, we propose the Prior Guided Feature Enrichment Network (PFENet). It consists of novel designs of (1) a training-free prior mask generation method that not only retains generalization power but also improves model performance and (2) Feature Enrichment Module (FEM) that overcomes spatial inconsistency by adaptively enriching query features with support features and prior masks. Extensive experiments on PASCAL-5$^i$ and COCO prove that the proposed prior generation method and FEM both improve the baseline method significantly. Our PFENet also outperforms state-of-the-art methods by a large margin without efficiency loss. It is surprising that our model even generalizes to cases without labeled support samples. Our code is available at https://github.com/Jia-Research-Lab/PFENet/.

Results

TaskDatasetMetricValueModel
Few-Shot LearningCOCO-20i (5-shot)FB-IoU61.6PFENet (VGG-16)
Few-Shot LearningCOCO-20i (5-shot)Mean IoU37.7PFENet (VGG-16)
Few-Shot LearningCOCO-20i (5-shot)FB-IoU61.9PFENet (ResNet-101)
Few-Shot LearningCOCO-20i (5-shot)Mean IoU37.4PFENet (ResNet-101)
Few-Shot LearningCOCO-20i (5-shot)learnable parameters (million)10.3PFENet (ResNet-101)
Few-Shot LearningPASCAL-5i (1-Shot)FB-IoU73.3PFENet (ResNet-50)
Few-Shot LearningPASCAL-5i (1-Shot)Mean IoU60.8PFENet (ResNet-50)
Few-Shot LearningPASCAL-5i (1-Shot)learnable parameters (million)10.3PFENet (ResNet-50)
Few-Shot LearningPASCAL-5i (1-Shot)FB-IoU72.9PFENet (ResNet-101)
Few-Shot LearningPASCAL-5i (1-Shot)Mean IoU60.1PFENet (ResNet-101)
Few-Shot LearningPASCAL-5i (1-Shot)learnable parameters (million)10.3PFENet (ResNet-101)
Few-Shot LearningPASCAL-5i (1-Shot)FB-IoU72PFENet (VGG-16)
Few-Shot LearningPASCAL-5i (1-Shot)Mean IoU58PFENet (VGG-16)
Few-Shot LearningCOCO-20i (1-shot)FB-IoU60PFENet (VGG-16)
Few-Shot LearningCOCO-20i (1-shot)Mean IoU34.1PFENet (VGG-16)
Few-Shot LearningCOCO-20i (1-shot)FB-IoU58.6PFENet (ResNet-101)
Few-Shot LearningCOCO-20i (1-shot)Mean IoU32.4PFENet (ResNet-101)
Few-Shot LearningCOCO-20i (1-shot)learnable parameters (million)10.3PFENet (ResNet-101)
Few-Shot LearningPASCAL-5i (5-Shot)FB-IoU73.9PFENet (ResNet-50)
Few-Shot LearningPASCAL-5i (5-Shot)Mean IoU61.9PFENet (ResNet-50)
Few-Shot LearningPASCAL-5i (5-Shot)learnable parameters (million)10.3PFENet (ResNet-50)
Few-Shot LearningPASCAL-5i (5-Shot)FB-IoU73.5PFENet (ResNet-101)
Few-Shot LearningPASCAL-5i (5-Shot)Mean IoU61.4PFENet (ResNet-101)
Few-Shot LearningPASCAL-5i (5-Shot)learnable parameters (million)10.3PFENet (ResNet-101)
Few-Shot LearningPASCAL-5i (5-Shot)FB-IoU72.3PFENet (VGG-16)
Few-Shot LearningPASCAL-5i (5-Shot)Mean IoU59PFENet (VGG-16)
Few-Shot Semantic SegmentationCOCO-20i (5-shot)FB-IoU61.6PFENet (VGG-16)
Few-Shot Semantic SegmentationCOCO-20i (5-shot)Mean IoU37.7PFENet (VGG-16)
Few-Shot Semantic SegmentationCOCO-20i (5-shot)FB-IoU61.9PFENet (ResNet-101)
Few-Shot Semantic SegmentationCOCO-20i (5-shot)Mean IoU37.4PFENet (ResNet-101)
Few-Shot Semantic SegmentationCOCO-20i (5-shot)learnable parameters (million)10.3PFENet (ResNet-101)
Few-Shot Semantic SegmentationPASCAL-5i (1-Shot)FB-IoU73.3PFENet (ResNet-50)
Few-Shot Semantic SegmentationPASCAL-5i (1-Shot)Mean IoU60.8PFENet (ResNet-50)
Few-Shot Semantic SegmentationPASCAL-5i (1-Shot)learnable parameters (million)10.3PFENet (ResNet-50)
Few-Shot Semantic SegmentationPASCAL-5i (1-Shot)FB-IoU72.9PFENet (ResNet-101)
Few-Shot Semantic SegmentationPASCAL-5i (1-Shot)Mean IoU60.1PFENet (ResNet-101)
Few-Shot Semantic SegmentationPASCAL-5i (1-Shot)learnable parameters (million)10.3PFENet (ResNet-101)
Few-Shot Semantic SegmentationPASCAL-5i (1-Shot)FB-IoU72PFENet (VGG-16)
Few-Shot Semantic SegmentationPASCAL-5i (1-Shot)Mean IoU58PFENet (VGG-16)
Few-Shot Semantic SegmentationCOCO-20i (1-shot)FB-IoU60PFENet (VGG-16)
Few-Shot Semantic SegmentationCOCO-20i (1-shot)Mean IoU34.1PFENet (VGG-16)
Few-Shot Semantic SegmentationCOCO-20i (1-shot)FB-IoU58.6PFENet (ResNet-101)
Few-Shot Semantic SegmentationCOCO-20i (1-shot)Mean IoU32.4PFENet (ResNet-101)
Few-Shot Semantic SegmentationCOCO-20i (1-shot)learnable parameters (million)10.3PFENet (ResNet-101)
Few-Shot Semantic SegmentationPASCAL-5i (5-Shot)FB-IoU73.9PFENet (ResNet-50)
Few-Shot Semantic SegmentationPASCAL-5i (5-Shot)Mean IoU61.9PFENet (ResNet-50)
Few-Shot Semantic SegmentationPASCAL-5i (5-Shot)learnable parameters (million)10.3PFENet (ResNet-50)
Few-Shot Semantic SegmentationPASCAL-5i (5-Shot)FB-IoU73.5PFENet (ResNet-101)
Few-Shot Semantic SegmentationPASCAL-5i (5-Shot)Mean IoU61.4PFENet (ResNet-101)
Few-Shot Semantic SegmentationPASCAL-5i (5-Shot)learnable parameters (million)10.3PFENet (ResNet-101)
Few-Shot Semantic SegmentationPASCAL-5i (5-Shot)FB-IoU72.3PFENet (VGG-16)
Few-Shot Semantic SegmentationPASCAL-5i (5-Shot)Mean IoU59PFENet (VGG-16)
Meta-LearningCOCO-20i (5-shot)FB-IoU61.6PFENet (VGG-16)
Meta-LearningCOCO-20i (5-shot)Mean IoU37.7PFENet (VGG-16)
Meta-LearningCOCO-20i (5-shot)FB-IoU61.9PFENet (ResNet-101)
Meta-LearningCOCO-20i (5-shot)Mean IoU37.4PFENet (ResNet-101)
Meta-LearningCOCO-20i (5-shot)learnable parameters (million)10.3PFENet (ResNet-101)
Meta-LearningPASCAL-5i (1-Shot)FB-IoU73.3PFENet (ResNet-50)
Meta-LearningPASCAL-5i (1-Shot)Mean IoU60.8PFENet (ResNet-50)
Meta-LearningPASCAL-5i (1-Shot)learnable parameters (million)10.3PFENet (ResNet-50)
Meta-LearningPASCAL-5i (1-Shot)FB-IoU72.9PFENet (ResNet-101)
Meta-LearningPASCAL-5i (1-Shot)Mean IoU60.1PFENet (ResNet-101)
Meta-LearningPASCAL-5i (1-Shot)learnable parameters (million)10.3PFENet (ResNet-101)
Meta-LearningPASCAL-5i (1-Shot)FB-IoU72PFENet (VGG-16)
Meta-LearningPASCAL-5i (1-Shot)Mean IoU58PFENet (VGG-16)
Meta-LearningCOCO-20i (1-shot)FB-IoU60PFENet (VGG-16)
Meta-LearningCOCO-20i (1-shot)Mean IoU34.1PFENet (VGG-16)
Meta-LearningCOCO-20i (1-shot)FB-IoU58.6PFENet (ResNet-101)
Meta-LearningCOCO-20i (1-shot)Mean IoU32.4PFENet (ResNet-101)
Meta-LearningCOCO-20i (1-shot)learnable parameters (million)10.3PFENet (ResNet-101)
Meta-LearningPASCAL-5i (5-Shot)FB-IoU73.9PFENet (ResNet-50)
Meta-LearningPASCAL-5i (5-Shot)Mean IoU61.9PFENet (ResNet-50)
Meta-LearningPASCAL-5i (5-Shot)learnable parameters (million)10.3PFENet (ResNet-50)
Meta-LearningPASCAL-5i (5-Shot)FB-IoU73.5PFENet (ResNet-101)
Meta-LearningPASCAL-5i (5-Shot)Mean IoU61.4PFENet (ResNet-101)
Meta-LearningPASCAL-5i (5-Shot)learnable parameters (million)10.3PFENet (ResNet-101)
Meta-LearningPASCAL-5i (5-Shot)FB-IoU72.3PFENet (VGG-16)
Meta-LearningPASCAL-5i (5-Shot)Mean IoU59PFENet (VGG-16)

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