基于相似性引导的多层融合网络的少镜头语义分割

Yemao Zhang, Wei Jia, Hai Min, Yingke Lei, Yang Zhao, Chunxiao Fan
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引用次数: 0

摘要

少镜头语义分割旨在解决仅使用具有相同对象类的少数支持图像对未见对象类进行分割的问题。目前,大多数相关的方法都集中在原型学习或特征相似上。然而,这些少镜头分割方法并没有很好地利用高级特征来增强预测结果。本文提出了一种轻量级的相似引导多层融合网络(SMNet),包含两个模块:相似引导模块(SGM)和多层融合模块(MLFM)。具体来说,SGM利用多个高层特征层的余弦相似度对查询和支持图像的中层特征进行增强,然后通过残差关注模块对增强特征进行细化。为了增强特征的多样性,我们将精细化的特征重新表述为一个时空序列问题。然后,我们引入了MLFM,它结合了两个卷积算法来获得不同尺度的融合特征。最后,通过特征融合得到预测掩码。实验结果表明,我们的模型可以在多个数据集上取得优异或有竞争力的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Similarity-Guided and Multi-Layer Fusion Network for Few-shot Semantic Segmentation
Few-shot semantic segmentation aims to tackle the problem that segmenting unseen object class using only a few support images with the same object class. At present, most related methods focus on prototype learning or feature similarity. However, these few-shot segmentation methods do not make good use of high-level features to enhance the prediction results. In this paper, we propose a lightweight Similarity-Guided and Multi-layer Fusion Network (SMNet) with two modules including Similarity-Guided Module (SGM) and Multi-Layer Fusion Module (MLFM). Specifically, the SGM utilizes cosine similarities in multiple high-level feature layers to augment the features in middle-level from query and support image, and then augmented features are refined via a residual attention module. In order to enhance the diversity of features, we reformulate the refined features as a spatiotemporal sequence problem. Then, we introduce the MLFM, which combines two ConvLSTMs to obtain fused feature from different scales. Finally, the decoder takes fused features to obtain predicted mask. Experiment results demonstrate that our model can achieve superior or competitive performances in several datasets.
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