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Infrared and visible images registration with adaptable local-global feature integration for rail inspection

机译:具有可适应的本地 - 全局功能集成的红外和可见图像注册,用于铁路检查

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摘要

Active thermography provides infrared images that contain sub-surface defect information, while visible images only reveal surface information. Mapping infrared information to visible images offers more comprehensive visualization for decision-making in rail inspection. However, the common information for registration is limited due to different modalities in both local and global level. For example, rail track which has low temperature contrast reveals rich details in visible images, but turns blurry in the infrared counterparts. This paper proposes a registration algorithm called Edge-Guided Speeded-Up-Robust Features (EG-SURF) to address this issue. Rather than sequentially integrating local and global information in matching stage which suffered from buckets effect, this algorithm adaptively integrates local and global information into a descriptor to gather more common information before matching. This adaptability consists of two facets, an adaptable weighting factor between local and global information, and an adaptable main direction accuracy. The local information is extracted using SURF while the global information is represented by shape context from edges. Meanwhile, in shape context generation process, edges are weighted according to local scale and decomposed into bins using a vector decomposition manner to provide more accurate descriptor. The proposed algorithm is qualitatively and quantitatively validated using eddy current pulsed thermography scene in the experiments. In comparison with other algorithms, better performance has been achieved. (C) 2017 Published by Elsevier B.V.
机译:有源热成像提供包含子表面缺陷信息的红外图像,而可见图像仅显示表面信息。将红外信息映射到可见图像提供更全面的轨道检测中的可视化。但是,由于本地和全球层面的不同模式,注册的公共信息受到限制。例如,具有低温对比的轨道轨道在可见图像中显示出丰富的细节,但在红外对应物中变模糊。本文提出了一种称为边缘引导加速 - 强大功能(例如 - 冲浪)的注册算法来解决此问题。该算法而不是顺序地集成在遭受桶效应的匹配阶段中的匹配阶段中的本地和全局信息,而不是在匹配阶段,而是自适应地将本地和全局信息集成到描述符中以在匹配之前收集更多常用信息。这种适应性包括两个方面,适应性的局部和全局信息之间的适应性加权因子,以及适应性的主方向精度。使用冲浪提取本地信息,而全局信息由边缘的形状上下文表示。同时,在形状上下文生成过程中,边缘根据本地秤加权,并使用矢量分解方式分解成箱,以提供更准确的描述符。所提出的算法在实验中使用涡流脉冲热成像场景定性和定量验证。与其他算法相比,已经实现了更好的性能。 (c)2017年由Elsevier B.V发布。

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