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Papers/Anti-aliasing Semantic Reconstruction for Few-Shot Semanti...

Anti-aliasing Semantic Reconstruction for Few-Shot Semantic Segmentation

Binghao Liu, Yao Ding, Jianbin Jiao, Xiangyang Ji, Qixiang Ye

2021-06-01CVPR 2021 1Few-Shot LearningSegmentationFew-Shot Semantic SegmentationSemantic Segmentation
PaperPDFCode(official)

Abstract

Encouraging progress in few-shot semantic segmentation has been made by leveraging features learned upon base classes with sufficient training data to represent novel classes with few-shot examples. However, this feature sharing mechanism inevitably causes semantic aliasing between novel classes when they have similar compositions of semantic concepts. In this paper, we reformulate few-shot segmentation as a semantic reconstruction problem, and convert base class features into a series of basis vectors which span a class-level semantic space for novel class reconstruction. By introducing contrastive loss, we maximize the orthogonality of basis vectors while minimizing semantic aliasing between classes. Within the reconstructed representation space, we further suppress interference from other classes by projecting query features to the support vector for precise semantic activation. Our proposed approach, referred to as anti-aliasing semantic reconstruction (ASR), provides a systematic yet interpretable solution for few-shot learning problems. Extensive experiments on PASCAL VOC and MS COCO datasets show that ASR achieves strong results compared with the prior works.

Results

TaskDatasetMetricValueModel
Few-Shot LearningCOCO-20i (5-shot)Mean IoU35.75ASR (ResNet-50)
Few-Shot LearningPASCAL-5i (1-Shot)Mean IoU58.16ASR (ResNet-50)
Few-Shot LearningPASCAL-5i (1-Shot)Mean IoU55.66ASR (VGG-16)
Few-Shot LearningCOCO-20i (1-shot)Mean IoU33.85ASR (ResNet-50)
Few-Shot LearningPASCAL-5i (5-Shot)Mean IoU60.96ASR (ResNet-50)
Few-Shot LearningPASCAL-5i (5-Shot)Mean IoU57.99ASR (VGG-16)
Few-Shot Semantic SegmentationCOCO-20i (5-shot)Mean IoU35.75ASR (ResNet-50)
Few-Shot Semantic SegmentationPASCAL-5i (1-Shot)Mean IoU58.16ASR (ResNet-50)
Few-Shot Semantic SegmentationPASCAL-5i (1-Shot)Mean IoU55.66ASR (VGG-16)
Few-Shot Semantic SegmentationCOCO-20i (1-shot)Mean IoU33.85ASR (ResNet-50)
Few-Shot Semantic SegmentationPASCAL-5i (5-Shot)Mean IoU60.96ASR (ResNet-50)
Few-Shot Semantic SegmentationPASCAL-5i (5-Shot)Mean IoU57.99ASR (VGG-16)
Meta-LearningCOCO-20i (5-shot)Mean IoU35.75ASR (ResNet-50)
Meta-LearningPASCAL-5i (1-Shot)Mean IoU58.16ASR (ResNet-50)
Meta-LearningPASCAL-5i (1-Shot)Mean IoU55.66ASR (VGG-16)
Meta-LearningCOCO-20i (1-shot)Mean IoU33.85ASR (ResNet-50)
Meta-LearningPASCAL-5i (5-Shot)Mean IoU60.96ASR (ResNet-50)
Meta-LearningPASCAL-5i (5-Shot)Mean IoU57.99ASR (VGG-16)

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