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Polynomial approximation based spectral dual graph convolution for scene parsing and segmentation

机译:基于多项式近似的场景解析与分割的光谱双图卷积

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摘要

Semantic segmentation requires both a large receptive field and accurate spatial information. Although existing methods based on the FCN have greatly improved the accuracy, it still does not show satisfactory results on complex scene parsing and tiny object identification. The convolution operation in FCN suffers from a restricted receptive field, while global modeling is fundamental to dense prediction tasks. In this work, we apply graph convolution into the semantic segmentation task and propose a spectral dual graph convolution module to solve the above problems. Moreover, the semantic segmentation task can be divided into two directions, one of which is to get a large receptive field and consider the global context information; the other is to focus on extracting spatial and contour clues, such as sharply changing curves and tiny objects. From the spectral-domain, it is supposed that low-frequency information is critical to the former task, while high-frequency information is vital to the latter task. Accordingly, high frequency and low-frequency biased graph convolutions are proposed to process the above information separately. Experiments on Cityscapes, COCO Stuff, PASCAL Context, and PASCAL VOC demonstrate the effectiveness of our methods on semantic segmentation. The proposal achieves comparable performance with advantages in computational and memory overhead.(c) 2021 Elsevier B.V. All rights reserved.
机译:语义分割需要大的接收领域和准确的空间信息。虽然基于FCN的现有方法大大提高了准确性,但它仍然没有显示复杂场景解析和微小对象识别的令人满意的结果。 FCN中的卷积操作涉及受限制的接收领域,而全球建模是密集的预测任务的基础。在这项工作中,我们将图形卷积应用于语义分割任务,并提出了一种频谱双图卷积模块来解决上述问题。此外,语义分割任务可以分为两个方向,其中一个是获得大量的接收领域并考虑全局上下文信息;另一个是专注于提取空间和轮廓线索,例如急剧改变曲线和微小物体。从光谱域来看,假设低频信息对前一项任务至关重要,而高频信息对后一项任务至关重要。因此,提出了高频和低频偏置图卷积来分别处理上述信息。 Cialscapes,Coco Stuff,Pascal背景和Pascal VOC的实验展示了我们对语义细分的方法的有效性。该提案在计算和记忆开销中实现了相当的性能。(c)2021 Elsevier B.V.保留所有权利。

著录项

  • 来源
    《Neurocomputing》 |2021年第28期|133-144|共12页
  • 作者单位

    Xidian Univ Sch Elect Engn Xian Shaanxi Peoples R China|Waseda Univ Grad Sch IPS Kitakyushu Fukuoka Japan;

    Waseda Univ Grad Sch IPS Kitakyushu Fukuoka Japan;

    Waseda Univ Grad Sch IPS Kitakyushu Fukuoka Japan;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Semantic segmentation; Graph convolution; Signal processing;

    机译:语义分割;图卷积;信号处理;

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