Remote sensing image registration of disaster-affected areas based on deep learning feature matching

Qiang Chen, Fei Song, Xianyuan Liu, Sanxing Zhang, Tao Lei, Ping Jiang
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Abstract

With the rapid development of remote sensing technology, remote sensing registration plays an important role in the assessment of various natural disasters, especially earthquakes. However, multi-temporal remote sensing images for the assessment have some characteristics, e.g. large-scale and rotation, resulting in challenges of remote sensing registration. In order to better register remote sensing images, we propose a new image registration method with a deep learning feature matching strategy. We first extract the pre-match point sets M and S by using SIFT-FLANN (SIFT-Fast Library for Approximate Nearest Neighbors). Second, we filter out the correct matching point pairs from M and S by using a multiscale neighborhood information network and a dual-path ConvNeXt network with self-attention-guided local information enhancement. Thirdly, we register multi-temporal remote sensing images by solve the model parameters of the spatial transformation. Finally, we evaluate our proposed method using a variety of remote sensing images with different phases, including visible light images with different illumination, scale and geometry changes. On the remote sensing image dataset containing images of pre- and post-earthquake, we compare our method to existing state-of-the-art methods and provide the results with the evaluation indexes such as Root Mean Square Error (RMSE). The results show that our method for multi-temporal remote sensing registration has a higher registration accuracy and more robustness.
基于深度学习特征匹配的灾区遥感图像配准
随着遥感技术的飞速发展,遥感配准在各种自然灾害尤其是地震灾害的评估中发挥着重要作用。然而,用于评估的多时相遥感图像具有大尺度和旋转等特点,这给遥感配准带来了挑战。为了更好地配准遥感图像,提出了一种基于深度学习特征匹配策略的图像配准方法。我们首先使用SIFT-FLANN (SIFT-Fast Library for Approximate Nearest Neighbors)提取预匹配点集M和S。其次,利用多尺度邻域信息网络和自注意引导局部信息增强的双路径ConvNeXt网络,从M和S中过滤出正确的匹配点对;第三,通过求解空间变换模型参数对多时相遥感图像进行配准。最后,我们使用不同相位的遥感图像(包括不同照度、尺度和几何变化的可见光图像)来评估我们的方法。在包含地震前后影像的遥感影像数据集上,我们将该方法与现有最先进的方法进行了比较,并提供了均方根误差(RMSE)等评价指标。结果表明,该方法具有较高的配准精度和鲁棒性。
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