基于注意与残差网络的遥感图像配准

Ying Chen, Jineng Li, Dongzhen Wang
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引用次数: 0

摘要

多视点遥感配准在地面目标识别、图像辅助导航、导弹图像制导等方面有着重要的应用。为了提高视角变化遥感图像的配准精度,提出了一种将注意机制与残差网络相结合的配准方法。残差网络作为特征提取的主干结构,提高了模型对复杂特征的抽象能力。同时,在特征提取网络中引入了基于通道和空间的注意机制,提高了模型对图像特征的区分和定位能力。最后,在特征匹配阶段,提出了一种相互关联操作,提高了特征匹配的性能。与对比方法相比,配准精度平均提高了10%,实验表明,该方法提高了多视点遥感图像的配准精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Remote Sensing Image Registration based on Attention and Residual Network
Multi-view remote sensing registration has important applications in ground target recognition, image aided navigation, missile image guidance and so on. In order to improve the registration accuracy of remote sensing image with change of view angle, a registration method combining attention mechanism and residual network is proposed. The residual network is used as the backbone structure of feature extraction to improve the abstract ability of the model for complex features. At the same time, the attention mechanism based on channel and spatial is introduced into the feature extraction network to improve the distinguish and location ability of the model to image features. Finally, in the feature matching stage, a mutual correlation operation that improve the performance of feature matching is proposed. Compared with the comparison method, the registration accuracy is improved by 10% on average, Experiments show that this method improves the accuracy of multi view remote sensing image registration.
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