论文标题
ALVIO:自适应线和基于点特征的视觉惯性探光仪,用于在室内环境中稳健定位
ALVIO: Adaptive Line and Point Feature-based Visual Inertial Odometry for Robust Localization in Indoor Environments
论文作者
论文摘要
根据建筑物的物体和结构,质地的量可能是丰富或不足的。基于传统的单一视觉初始导航系统(VIN)的本地化技术在保证稳定功能的环境中表现良好。但是,在不断变化的室内环境中,他们的性能不会确保。作为解决方案,我们在本文中提出了自适应线和基于点特征的视觉惯性探光仪(ALVIO)。 Alvio积极利用在室内空间中丰富的线的几何信息。通过使用强的线跟踪器和基于特征的紧密耦合优化的自适应选择,可以在可变纹理环境中执行强大的本地化。 ALVIO的结构特征如下:首先,提出的基于光流的线路跟踪器执行强大的线路跟踪和管理。通过使用表现几何图形和三角学,恢复了准确的3D线。这些3D线用于计算线重投影误差。最后,通过在优化过程中基于灵敏度 - 分析的自适应特征选择,我们可以在各种室内环境中稳健地估计姿势。我们在公共数据集上验证了系统的性能,并将其与其他最先进的算法(S-MSKCF,VINS-MONO)进行比较。与VINS-MONO相比,在基于点和线路选择的算法中,Translation RMSE增加了16.06%,而总优化时间减少了49.31%。通过此,我们证明了这是一种有用的算法,作为实时姿势估计算法。
The amount of texture can be rich or deficient depending on the objects and the structures of the building. The conventional mono visual-initial navigation system (VINS)-based localization techniques perform well in environments where stable features are guaranteed. However, their performance is not assured in a changing indoor environment. As a solution to this, we propose Adaptive Line and point feature-based Visual Inertial Odometry (ALVIO) in this paper. ALVIO actively exploits the geometrical information of lines that exist in abundance in an indoor space. By using a strong line tracker and adaptive selection of feature-based tightly coupled optimization, it is possible to perform robust localization in a variable texture environment. The structural characteristics of ALVIO are as follows: First, the proposed optical flow-based line tracker performs robust line feature tracking and management. By using epipolar geometry and trigonometry, accurate 3D lines are recovered. These 3D lines are used to calculate the line re-projection error. Finally, with the sensitivity-analysis-based adaptive feature selection in the optimization process, we can estimate the pose robustly in various indoor environments. We validate the performance of our system on public datasets and compare it against other state-of the-art algorithms (S-MSKCF, VINS-Mono). In the proposed algorithm based on point and line feature selection, translation RMSE increased by 16.06% compared to VINS-Mono, while total optimization time decreased by up to 49.31%. Through this, we proved that it is a useful algorithm as a real-time pose estimation algorithm.