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UAV Pose Estimation using Cross-view Geolocalization with Satellite Imagery

机译:结合卫星影像的交叉视图地理定位的无人机姿态估计

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We propose an image-based cross-view geolocalization method that estimates the global pose of a UAV with the aid of georeferenced satellite imagery. Our method consists of two Siamese neural networks that extract relevant features despite large differences in viewpoints. The input to our method is an aerial UAV image and nearby satellite images, and the output is the weighted global pose estimate of the UAV camera. We also present a framework to integrate our crossview geolocalization output with visual odometry through a Kalman filter. We build a dataset of simulated UAV images and satellite imagery to train and test our networks. We show that our method performs better than previous camera pose estimation methods, and we demonstrate our networks ability to generalize well to test datasets with unseen images. Finally, we show that integrating our method with visual odometry significantly reduces trajectory estimation errors.
机译:我们提出了一种基于图像的横断面地理定位方法,该方法可借助地理参考卫星图像估算无人机的全球姿态。我们的方法由两个暹罗神经网络组成,尽管它们在观点上存在很大差异,但它们都提取了相关特征。我们方法的输入是空中无人机图像和附近的卫星图像,输出是无人机摄像机的加权全局姿态估计。我们还提供了一个框架,可通过卡尔曼过滤器将横断面地理定位输出与可视里程表集成在一起。我们建立了模拟的无人机图像和卫星图像的数据集,以训练和测试我们的网络。我们证明了我们的方法比以前的相机姿态估计方法具有更好的性能,并且证明了我们的网络具有很好的泛化能力以测试带有看不见图像的数据集。最后,我们证明了将我们的方法与视觉里程计集成在一起可以显着减少轨迹估计误差。

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