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A SLAM Map Restoration Algorithm Based on Submaps and an Undirected Connected Graph

2020-07-29 04:26:36
Zongqian Zhan (1), Wenjie Jian (1), Yihui Li (1), Xin Wang (2), Yang Yue (1) ((1) School of Geodesy and Geomatics, Wuhan University, China, (2) Leibniz University Hannover Institute of Geodesy)

Abstract

Many visual simultaneous localization and mapping (SLAM) systems have been shown to be accurate and robust, and have real-time performance capabilities on both indoor and ground datasets. However, these methods can be problematic when dealing with aerial frames captured by a camera mounted on an unmanned aerial vehicle (UAV) because the flight height of the UAV can be difficult to control and is easily affected by the this http URL cope with the case of lost tracking, many visual SLAM systems employ a relocalization strategy. This involves the tracking thread continuing the online working by inspecting the connections between the subsequent new frames and the generated map before the tracking was lost. To solve the missing map problem, which is an issue in many applications , after the tracking is lost, based on monocular visual SLAM, we present a method of reconstructing a complete global map of UAV datasets by sequentially merging the submaps via the corresponding undirected connected graph. Specifically, submaps are repeatedly generated, from the initialization process to the place where the tracking is lost, and a corresponding undirected connected graph is built by considering these submaps as nodes and the common map points within two submaps as edges. The common map points are then determined by the bag-of-words (BoW) method, and the submaps are merged if they are found to be connected with the online map in the undirect connected graph. To demonstrate the performance of the proposed method, we first investigated the performance on a UAV dataset, and the experimental results showed that, in the case of several tracking failures, the integrity of the mapping was significantly better than that of the current mainstream SLAM method.

Abstract (translated)

URL

https://arxiv.org/abs/2007.14592

PDF

https://arxiv.org/pdf/2007.14592.pdf


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