Few-shot semantic segmentation is the task of learning to locate each pixel of the novel class in the query image with only a few annotated support images. The current correlation-based methods construct pair-wise feature correlations to establish the many-to-many matching because the typical prototype-based approaches cannot learn fine-grained correspondence relations. However, the existing methods still suffer from the noise contained in naive correlations and the lack of context semantic information in correlations. To alleviate these problems mentioned above, we propose a Feature-Enhanced Context-Aware Network (FECANet). Specifically, a feature enhancement module is proposed to suppress the matching noise caused by inter-class local similarity and enhance the intra-class relevance in the naive correlation. In addition, we propose a novel correlation reconstruction module that encodes extra correspondence relations between foreground and background and multi-scale context semantic features, significantly boosting the encoder to capture a reliable matching pattern. Experiments on PASCAL-$5^i$ and COCO-$20^i$ datasets demonstrate that our proposed FECANet leads to remarkable improvement compared to previous state-of-the-arts, demonstrating its effectiveness.
翻译:少见的语义分解是学习在查询图像中找到每个小类的小类像素的任务,只有几个附加注释的支持图像。当前基于关联的方法构建了双向相配的相配关系,因为典型的原型方法无法学习细微分辨的对应关系。然而,现有方法仍然受到天真相关性中所含的噪音以及相关关系中缺乏上下文语义信息的影响。为了缓解上述这些问题,我们提议了一个“Fateratur-Enhanced confern-Aware 网络(FECANet) ” 。具体地说,建议了一个增强功能模块,以抑制各等级间本地类似性造成的匹配噪音,并增强在天性相关关系中阶级内部的相关性。此外,我们建议了一个新的相关重建模块,将地表和背景以及多尺度背景的语义性语言特征之间的额外对应关系编码,大大地提升了计算器以捕捉到可靠的匹配模式。关于PACAL-5美元和CO-20美元数据集的实验表明,我们提议的FECANet与先前的状态相比,其效率得到了显著的改进。