Unmanned Aerial Vehicle (UAV) localization capability is critical in a Global Navigation Satellite System (GNSS) denial environment. The aim of this paper is to investigate the problem of locating the UAV itself through a purely visual approach. This task mainly refers to: matching the corresponding geo-tagged satellite images through the images acquired by the camera when the UAV does not acquire GNSS signals, where the satellite images are the bridge between the UAV images and the location information. However, the sampling points of previous cross-view datasets based on UAVs are discrete in spatial distribution and the inter-class relationships are not established. In the actual process of UAV-localization, the inter-class feature similarity of the proximity position distribution should be small due to the continuity of UAV movement in space. In view of this, this paper has reformulated an intensive dataset for UAV positioning tasks, which is named DenseUAV, aiming to solve the problems caused by spatial distance and scale transformation in practical application scenarios, so as to achieve high-precision UAV-localization in GNSS denial environment. In addition, a new continuum-type evaluation metric named SDM is designed to evaluate the accuracy of model matching by exploiting the continuum of UAVs in space. Specifically, with the ideas of siamese networks and metric learning, a transformer-based baseline was constructed to enhance the capture of spatially subtle features. Ultimately, a neighbor-search post-processing strategy was proposed to solve the problem of large distance localisation bias.
翻译:无人驾驶航空飞行器(UAV)本地化能力对于全球导航卫星系统(GNSS)的否定环境至关重要。本文件的目的是调查通过纯视觉方法定位UAV本身的问题。这一任务主要涉及:将无人驾驶航空飞行器(UAV)不获取GNS信号,卫星图像是UAV图像与定位信息之间的桥梁时通过相机获得的图像匹配相应的地理标记卫星图像;然而,以前基于UAVs的交叉视图数据集的取样点在空间分布上是互不相连的,而且没有建立跨级关系。在UAV-本地化的实际过程中,由于UAV在空间的移动连续性,近距离位置分布的跨级特征相似。鉴于此,本文为UAVS定位任务重新制作了一个密集的数据集,称为DenseUAVA,目的是解决基于实际应用设想的空间距离和规模变异造成的问题,从而在全球导航卫星系统拒绝环境中实现高精确度的UAVA-本地化。此外,在远端位置分布的实际过程中,由于UAVAV的远程分布位置分布分布的类似性,由于UAVAVAVA的大型常规化模型,因此,为SDMDML的地面变异化的模型设计了一个新的地面变异地标准,因此,为了将U-SDMDMDML的模型的模型的模型与地面变的模型与地面变异性模型与地面变的模型的模型比。