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Papers/Prototype Mixture Models for Few-shot Semantic Segmentation

Prototype Mixture Models for Few-shot Semantic Segmentation

Boyu Yang, Chang Liu, Bohao Li, Jianbin Jiao, Qixiang Ye

2020-08-10ECCV 2020 8SegmentationFew-Shot Semantic SegmentationSemantic Segmentation
PaperPDFCode(official)

Abstract

Few-shot segmentation is challenging because objects within the support and query images could significantly differ in appearance and pose. Using a single prototype acquired directly from the support image to segment the query image causes semantic ambiguity. In this paper, we propose prototype mixture models (PMMs), which correlate diverse image regions with multiple prototypes to enforce the prototype-based semantic representation. Estimated by an Expectation-Maximization algorithm, PMMs incorporate rich channel-wised and spatial semantics from limited support images. Utilized as representations as well as classifiers, PMMs fully leverage the semantics to activate objects in the query image while depressing background regions in a duplex manner. Extensive experiments on Pascal VOC and MS-COCO datasets show that PMMs significantly improve upon state-of-the-arts. Particularly, PMMs improve 5-shot segmentation performance on MS-COCO by up to 5.82\% with only a moderate cost for model size and inference speed.

Results

TaskDatasetMetricValueModel
Few-Shot LearningCOCO-20i (5-shot)Mean IoU35.5RPMM (ResNet-50)
Few-Shot LearningCOCO-20i -> Pascal VOC (1-shot)Mean IoU49.6RPMM
Few-Shot LearningPASCAL-5i (10-Shot)Mean IoU57.6RPMM
Few-Shot LearningCOCO-20i (10-shot)Mean IoU33.1RPMM
Few-Shot LearningPASCAL-5i (1-Shot)Mean IoU56.3RPMM (ResNet-50)
Few-Shot LearningCOCO-20i (1-shot)Mean IoU30.6RPMM (ResNet-50)
Few-Shot LearningPASCAL-5i (5-Shot)Mean IoU57.3RPMM (ResNet-50)
Few-Shot LearningCOCO-20i -> Pascal VOC (5-shot)Mean IoU53.8RPMM
Few-Shot Semantic SegmentationCOCO-20i (5-shot)Mean IoU35.5RPMM (ResNet-50)
Few-Shot Semantic SegmentationCOCO-20i -> Pascal VOC (1-shot)Mean IoU49.6RPMM
Few-Shot Semantic SegmentationPASCAL-5i (10-Shot)Mean IoU57.6RPMM
Few-Shot Semantic SegmentationCOCO-20i (10-shot)Mean IoU33.1RPMM
Few-Shot Semantic SegmentationPASCAL-5i (1-Shot)Mean IoU56.3RPMM (ResNet-50)
Few-Shot Semantic SegmentationCOCO-20i (1-shot)Mean IoU30.6RPMM (ResNet-50)
Few-Shot Semantic SegmentationPASCAL-5i (5-Shot)Mean IoU57.3RPMM (ResNet-50)
Few-Shot Semantic SegmentationCOCO-20i -> Pascal VOC (5-shot)Mean IoU53.8RPMM
Meta-LearningCOCO-20i (5-shot)Mean IoU35.5RPMM (ResNet-50)
Meta-LearningCOCO-20i -> Pascal VOC (1-shot)Mean IoU49.6RPMM
Meta-LearningPASCAL-5i (10-Shot)Mean IoU57.6RPMM
Meta-LearningCOCO-20i (10-shot)Mean IoU33.1RPMM
Meta-LearningPASCAL-5i (1-Shot)Mean IoU56.3RPMM (ResNet-50)
Meta-LearningCOCO-20i (1-shot)Mean IoU30.6RPMM (ResNet-50)
Meta-LearningPASCAL-5i (5-Shot)Mean IoU57.3RPMM (ResNet-50)
Meta-LearningCOCO-20i -> Pascal VOC (5-shot)Mean IoU53.8RPMM

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