TY - JOUR PY - 2020// TI - Attention-based road registration for GPS-denied UAS navigation JO - IEEE transactions on neural networks and learning systems A1 - Wang, Teng A1 - Zhao, Ye A1 - Wang, Jiawei A1 - Somani, Arun K. A1 - Sun, Changyin SP - ePub EP - ePub VL - ePub IS - ePub N2 - 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.
Language: en
LA - en SN - 2162-237X UR - http://dx.doi.org/10.1109/TNNLS.2020.3015660 ID - ref1 ER -