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FGN: Fully Guided Network for Few-Shot Instance Segmentation

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Few-shot instance segmentation (FSIS) conjoins the few-shot learning paradigm with general instance segmentation, which provides a possible way of tackling instance segmentation in the lack of abundant labeled data for training. This paper presents a Fully Guided Network (FGN) for few-shot instance segmentation. FGN perceives FSIS as a guided model where a so-called support set is encoded and utilized to guide the predictions of a base instance segmentation network (i.e., Mask R-CNN), critical to which is the guidance mechanism. In this view, FGN introduces different guidance mechanisms into the various key components in Mask R-CNN, including Attention-Guided RPN, Relation-Guided Detector, and Attention-Guided FCN, in order to make full use of the guidance effect from the support set and adapt better to the inter-class generalization. Experiments on public datasets demonstrate that our proposed FGN can outperform the state-of-the-art methods.

Zhibo Fan, Jin-Gang Yu, Zhihao Liang, Jiarong Ou, Changxin Gao, Gui-Song Xia, Yuanqing Li• 2020

Related benchmarks

TaskDatasetResultRank
Object DetectionMS COCO novel classes 2017 (val)
AP10.9
123
Object DetectionCOCO Base Categories 2017 (val)
AP28.6
17
Object DetectionCOCO novel categories 2014
AP17.9
15
Object DetectionCOCO Novel Categories 2014 (test)
AP7.7
15
Object DetectionCOCO Base Categories 2014 (test)
AP32.1
15
Object DetectionCOCO2VOC
AP5030.8
3
Instance SegmentationCOCO2VOC
AP5016.2
3
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