弱监督语义分割的多粒度语义挖掘

Meijie Zhang, Jianwu Li, Tianfei Zhou
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引用次数: 5

摘要

本文采用图像级监督的方法解决了图像语义分割的学习问题。这项任务在减少注释工作量方面很有希望,但由于难以将高级概念与低级外观直接关联,因此极具挑战性。虽然目前的工作是独立处理每个概念,但我们采用更广泛的视角来获取语义概念的隐式整体结构,这些结构表达了有价值的先验知识,用于准确的概念基础。这就提出了多粒度语义挖掘,这是一种新的形式,允许灵活地规范标签空间中的复杂关系。特别是,我们提出了一种异构图神经网络(Hgnn)来模拟一组输入图像中多粒度语义的异质性。Hgnn由两种类型的子图组成:1)外部图表征不同图像之间的关系,以挖掘图像间的上下文;对于每个图像,2)构建一个内部图来挖掘每个单独图像内的类间语义依赖关系。通过异构图学习,我们的Hgnn能够全面理解对象模式,从而获得更准确的语义概念基础。广泛的实验结果表明,Hgnn在流行的PASCAL VOC 2012和COCO 2014基准上优于当前最先进的方法。我们的代码可在:https://github.com/maeve07/HGNN.git。
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Multi-Granular Semantic Mining for Weakly Supervised Semantic Segmentation
This paper solves the problem of learning image semantic segmentation using image-level supervision. The task is promising in terms of reducing annotation efforts, yet extremely challenging due to the difficulty to directly associate high-level concepts with low-level appearance. While current efforts handle each concept independently, we take a broader perspective to harvest implicit, holistic structures of semantic concepts, which express valuable prior knowledge for accurate concept grounding. This raises multi-granular semantic mining, a new formalism allowing flexible specification of complex relations in the label space. In particular, we propose a heterogeneous graph neural network (Hgnn) to model the heterogeneity of multi-granular semantics within a set of input images. The Hgnn consists of two types of sub-graphs: 1) an external graph characterizes the relations across different images to mine inter-image contexts; and for each image, 2) an internal graph is constructed to mine inter-class semantic dependencies within each individual image. Through heterogeneous graph learning, our Hgnn is able to land a comprehensive understanding of object patterns, leading to more accurate semantic concept grounding. Extensive experimental results show that Hgnn outperforms the current state-of-the-art approaches on the popular PASCAL VOC 2012 and COCO 2014 benchmarks. Our code is available at: https://github.com/maeve07/HGNN.git.
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