The fusion scheme is crucial to the multi-sensor fusion method that is the promising solution to the state estimation in complex and extreme environments like underground mines and planetary surfaces. In this work, a light-weight iEKF-based LiDAR-inertial odometry system is presented, which utilizes a degeneration-aware and modular sensor-fusion pipeline that takes both LiDAR points and relative pose from another odometry as the measurement in the update process only when degeneration is detected. Both the CRLB theory and simulation test are used to demonstrate the higher accuracy of our method compared to methods using a single observation. Furthermore, the proposed system is evaluated in perceptually challenging datasets against various state-of-the-art sensor-fusion methods. The results show that the proposed system achieves real-time and high estimation accuracy performance despite the challenging environment and poor observations.
翻译:聚变计划对于多传感器聚变方法至关重要,这是在地下矿和行星表面等复杂和极端环境中国家估计的有希望的解决办法。在这项工作中,介绍了一个以轻量的 iEKF 为基础的LiDAR-内皮色测量系统,该系统使用一种分代和模块化传感集管道,该管道的分解和模块化传感-融合管道将LIDAR的点点和相对来自另一种异位测量作为更新过程中的测量方法,只有在检测到变异时才能进行。CRLB理论和模拟测试都用来表明我们的方法比使用单一观测的方法更精确。此外,对拟议系统的评价是用一种概念上具有挑战性的数据集来对照各种最先进的传感集方法。结果显示,拟议的系统在环境和观测不良的情况下实现了实时和高估精度的性能。