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Attention-Based Road Registration for GPS-Denied UAS Navigation

机译:基于注意的GPS拒绝UAS导航的道路注册

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摘要

Matching and registration between aerial images and prestored road landmarks are critical techniques to enhance unmanned aerial system (UAS) navigation in the global positioning system (GPS)-denied urban environments. Current registration processes typically consist of two separate stages of road extraction and road registration. These two-stage registration approaches are time-consuming and less robust to noise. To that end, in this article, we, for the first time, investigate the problem of end-to-end Aerial-Road registration. Using deep learning, we develop a novel attention-based neural network architecture for Aerial-Road registration. In this model, we construct two-branch neural networks with shared weights to map two input images into a common embedding space. Besides, considering that road features are sparsely distributed in images, we incorporate a novel multibranch attention module to filter out false descriptor matches from the indiscriminative background in order to improve registration accuracy. Finally, the results from extensive experiments show that compared with state-of-the-art approaches, the mean absolute errors of our approach in rotation angle and the translations in the x- and y-directions are reduced down by a factor of 1.24, 1.38, and 1.44, respectively. Furthermore, as a byproduct, our experimental results prove the feasibility of a neural network multitask learning approach to simultaneously achieve accurate Aerial-Road matching and registration, thus providing an efficient and accurate UAS geolocalization.
机译:航空图像和预测的道路之间的匹配和登记是提高全球定位系统(GPS)的无人空中系统(UAS)导航的关键技术(GPS)的城市环境。目前的登记过程通常包括两种单独的道路提取和道路登记阶段。这两级登记方法耗时,噪音较低。为此,在本文中,我们首次调查端到端的空中道路登记问题。使用深度学习,我们开发了一种用于空中路线注册的新型关注的神经网络架构。在该模型中,我们构建了具有共享权重的双分支神经网络,将两个输入图像映射到常见的嵌入空间中。此外,考虑到道路特征在图像中分布稀疏地分布,我们纳入了一种新型多刺指导模块,以从难民衍生背景中滤除错误描述符,以提高登记精度。最后,来自广泛实验的结果表明,与最先进的方法相比,我们在旋转角度的平均绝对误差和X和Y方向的翻译减少了1.24倍, 1.38和1.44分别。此外,作为副产品,我们的实验结果证明了神经网络多任务学习方法同时实现准确的空中公路匹配和登记的可行性,从而提供了高效和准确的UAS地理化化。

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