Robust Tightly-Coupled Visual-Inertial Odometry with Pre-built Maps in High Latency Situations

2022 
In this paper, we present a novel monocular visual-inertial odometry system with pre-built maps deployed on the remote server, which can robustly run in real-time on a mobile device even in high latency situations. By tightly coupling VIO with geometric priors from pre-built maps, our system can tolerate the high latency and low frequency of global localization service, which is especially suitable for practical applications when the localization service is deployed on the remote server. Firstly, sparse point clouds are obtained from the dense mesh by the ray casting method according to the localization results. The dense mesh can be reconstructed from the point clouds generated by Structure-from-Motion. We directly use the sparse point clouds in feature tracking and state update to suppress drift. In the process of feature tracking, the high local accuracy of VIO is fully utilized to effectively remove outliers and make our system robust. The experiments on EurocMav datasets and simulation datasets show that compared with state-of-the-art methods, our method can achieve better results in terms of both precision and robustness. The effectiveness of the proposed method is further demonstrated through a real-time AR demo on a mobile phone with the aid of visual localization on the remote server.
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