Multi-temporal remote sensing image registration based on siamese network

Junjie Liu, Yuanzhuo Li, Yu Chen
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Abstract

Multi-temporal remote sensing image registration aims to find the optimal alignment between images acquired from different times. The complexity and disparity of features in remote sensing images bring great difficulties to image registration. We propose a deep learning method based on the Siamese network to address this problem. Unlike traditional methods doing feature extraction and feature matching separately. We pair patches from sensed and reference images, and directly learn the mapping relationship between those image patch pairs and their matching labels. This end-to-end network architecture helps us optimize the entire network, which is what traditional methods lack. Besides, we use the spatial scale convolution layer in the feature extraction network to improve scale variations’ adaptability. Extensive experiments are conducted on a multi-temporal satellite image dataset from google earth. The results of the experiment indicate that our method can obtain more correct matched points and effectively improve the registration accuracy than traditional image registration methods.
基于暹罗网络的多时相遥感图像配准
多时相遥感图像配准的目的是寻找不同时间获取的图像之间的最优配准。遥感图像特征的复杂性和差异性给图像配准带来了很大的困难。我们提出了一种基于Siamese网络的深度学习方法来解决这个问题。与传统的特征提取和特征匹配方法不同。我们将感知图像和参考图像的patch配对,并直接学习这些图像patch对与其匹配标签之间的映射关系。这种端到端的网络架构可以帮助我们优化整个网络,这是传统方法所缺乏的。此外,我们在特征提取网络中使用空间尺度卷积层来提高尺度变化的适应性。在google earth多时相卫星图像数据集上进行了大量实验。实验结果表明,与传统的图像配准方法相比,该方法可以获得更准确的匹配点,有效地提高了配准精度。
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