基于双互补原型学习的少镜头分割

Q. Ren, Jie Chen
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引用次数: 2

摘要

: Few-shot语义分割旨在从具有足够数据的基类中转移知识,以有限的Few-shot样本表示新类。最近的方法遵循带有前景表示原型的度量学习框架。然而,由于前景的代表性不足,前景和背景之间缺乏可辨别性,它们仍然面临着新类别分割的挑战。为了解决这个问题,我们提出了双互补原型网络(DCNet)。首先,我们设计了一个无需训练的互补原型生成(CPG)模块,从支持图像的掩模区域中提取综合信息。其次,我们设计了一个背景引导学习(BGL)作为前景分割分支的补充分支,扩大前景与其对应背景之间的差异,使前景中新类的表示更具判别性。在PASCAL-5 i和COCO-20 i上进行的大量实验表明,我们的DCNet达到了最先进的水平
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Dual Complementary Prototype Learning for Few-Shot Segmentation
: Few-shot semantic segmentation aims to transfer knowledge from base classes with sufficient data to represent novel classes with limited few-shot samples. Recent methods follow a metric learning framework with prototypes for foreground representation. However, they still face the challenge of segmentation of novel classes due to inadequate representation of foreground and lack of discriminability between foreground and background. To address this problem, we propose the Dual Complementary prototype Network (DCNet). Firstly, we design a training-free Complementary Prototype Generation (CPG) module to extract comprehensive information from the mask region in the support image. Secondly, we design a Background Guided Learning (BGL) as a complementary branch of the foreground segmentation branch, which enlarges difference between the foreground and its corresponding background so that the representation of novel class in the foreground could be more discriminative. Extensive experiments on PASCAL-5 i and COCO-20 i demonstrate that our DCNet achieves state-of-the-art
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