UAV Visual Localization Technology Based on Heterogenous Remote Sensing Image Matching

Haoyang Tang, Jiakun Shi, Xin Miao, Ruichen Wu, Dongfang Yang
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Abstract

At present, the positioning function of intelligent UAVs mainly uses GPS technology, and GPS signals are susceptible to environmental and electromagnetic interference factors. In this paper, we combine remote sensing image processing with image matching algorithms to propose a GPS-independent visual localization technique for UAVs. First, the VGG16 network is used as the feature extraction backbone network, and the backbone network is designed and optimized for the characteristics of heterogenous remote sensing images. Secondly, a feature point screening and matching strategy is constructed, by which common feature points between heterogeneous remote sensing images can be screened and used for feature matching. Finally, the remote sensing image containing geographic location information and the UAV aerial image are fed into the network for feature extraction and matching, and the transformation matrix between the aligned images is calculated by the successfully matched feature points, and the transformation matrix is used to complete the mapping from the aerial image to the satellite image, and finally the geographic location information of each pixel can be read from the mapped image to complete the localization.
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基于异构遥感影像匹配的无人机视觉定位技术
目前,智能无人机的定位功能主要采用GPS技术,GPS信号容易受到环境和电磁干扰因素的影响。本文将遥感图像处理与图像匹配算法相结合,提出了一种与gps无关的无人机视觉定位技术。首先,采用VGG16网络作为特征提取骨干网,并针对异构遥感图像的特点对骨干网进行了设计和优化;其次,构建了一种特征点筛选与匹配策略,利用该策略筛选异构遥感影像之间的共同特征点进行特征匹配;最后,将包含地理位置信息的遥感图像与无人机航拍图像馈送到网络中进行特征提取与匹配,通过匹配成功的特征点计算对齐图像之间的变换矩阵,利用变换矩阵完成航拍图像到卫星图像的映射。最后从映射图像中读取各像素点的地理位置信息,完成定位。
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