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MINDFLOW BASED DENSE MATCHING BETWEEN TIR AND RGB IMAGES

机译:基于Mindflow基于TIR和RGB图像之间的密集匹配

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摘要

Image registration is a fundamental issue in photogrammetry and remote sensing, which targets to find the alignment between different images. Recently, registration of images from difference sensors become the hot topic. The registered images from different sensors are able to offer additional information, which help with different tasks like segmentation, classification, and even emergency analysis. In this paper, we proposed a registration strategy to calculate the dominant orientation difference and then achieve the dense alignment of Thermal Infrared (TIR) image and RGB image with MINDflow. Firstly, the orientation difference of TIR images and RGB images is calculated by finding the dominant image orientations based on phase congruency. Then, the modality independent neighborhood descriptor (MIND) together with global optical flow algorithm are adopted as MINDflow for dense matching. Our method is tested in the image sets containing TIR images and RGB images captured separately but in the same construction site areas. The results show that it is able to achieve the optimal results with features of significance even for dramatically radiometric differences between TIR images and RGB images. By comparing the results with other descriptor, our method is more robust and keep the features of objects in the images.
机译:图像注册是摄影测量和遥感的基本问题,该目录是在不同图像之间找到对齐的目标。最近,差异传感器的图像的登记成为热门话题。来自不同传感器的注册图像能够提供附加信息,这有助于不同的任务,如分割,分类,甚至紧急分析。在本文中,我们提出了一种注册策略来计算主导取向差异,然后实现热红外(TIR)图像和RGB图像的致密对准。首先,通过基于相互相找到主导图像取向来计算TIR图像和RGB图像的取向差。然后,将模态独立的邻域描述符(MINE)与全局光学流算法一起被用作密集匹配的MENDFLOW。我们的方法在包含TIR图像的图像集中测试,并且RGB图像单独捕获,而是在相同的施工现场区域中。结果表明,即使在TIR图像和RGB图像之间发生显着的辐射差异,它能够实现具有重要性的特征的最佳结果。通过将结果与其他描述符进行比较,我们的方法更加强大,并保持图像中对象的特征。

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