RNIN-VIO: Robust Neural Inertial Navigation Aided Visual-Inertial Odometry in Challenging Scenes

Danpeng Chen, Nan Wang, Runsen Xu, Weijian Xie, H. Bao, Guofeng Zhang
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引用次数: 17

Abstract

In this work, we propose a tightly-coupled EKF framework for visual-inertial odometry with NIN (Neural Inertial Navigation) aided. Traditional VIO systems are fragile in challenging scenes with weak or confusing visual information, such as weak/repeated texture, dynamic environment, fast camera motion with serious motion blur, etc. It is extremely difficult for a vision-based algorithm to handle these problems. So we firstly design a robust deep learning based inertial network (called RNIN), using only IMU measurements as input. RNIN is significantly more robust in challenging scenes than traditional VIO systems. In order to take full advantage of vision-based algorithms in AR/VR areas, we further develop a multi-sensor fusion system RNIN-VIO, which tightly couples the visual, IMU and NIN measurements. Our system performs robustly in extremely challenging conditions, with high precision both in trajectories and AR effects. The experimental results of evaluation on dataset evaluation and online AR demo demonstrate the superiority of the proposed system in robustness and accuracy.
rninvio:鲁棒神经惯性导航辅助视觉惯性里程计在挑战场景
在这项工作中,我们提出了一个紧密耦合的EKF框架,用于NIN(神经惯性导航)辅助的视觉惯性里程计。传统的VIO系统在视觉信息薄弱或混乱的挑战性场景中是脆弱的,例如弱/重复的纹理、动态环境、快速的镜头运动和严重的运动模糊等。对于基于视觉的算法来说,处理这些问题是非常困难的。因此,我们首先设计了一个鲁棒的基于深度学习的惯性网络(称为RNIN),仅使用IMU测量作为输入。在具有挑战性的场景中,RNIN比传统的VIO系统具有更强的鲁棒性。为了在AR/VR领域充分利用基于视觉的算法,我们进一步开发了一种多传感器融合系统rni - vio,该系统将视觉,IMU和NIN测量紧密耦合。我们的系统在极具挑战性的条件下表现稳健,在轨迹和AR效果方面都具有高精度。数据集评估和在线AR演示的实验结果证明了该系统在鲁棒性和准确性方面的优越性。
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