论文标题
直接激光惯性进程:具有连续时间校正的轻质LIO
Direct LiDAR-Inertial Odometry: Lightweight LIO with Continuous-Time Motion Correction
论文作者
论文摘要
敏捷飞行或穿越不规则地形的侵略性运动会导致激光扫描中的运动失真,从而降低状态估计和映射。存在一些减轻这种效果的方法,但是对于资源约束的移动机器人来说,它们仍然太简单或计算成本很高。为此,本文介绍了直接的激光惯性进程(DLIO),这是一种轻巧的激光惯性射击算法,采用新的粗到精细方法来构建连续的时间轨迹进行精确运动校正。我们方法的关键在于构建一组分析方程,这些方程仅通过时间来参数化,从而实现了快速和可行的点。此方法仅仅是因为我们的非线性几何观察者具有强大的收敛性能,后者提供了可证明正确的状态估计值来初始化敏感的IMU集成步骤。此外,通过同时执行运动校正和上一代,通过直接将每次扫描注册到地图并绕过扫描到扫描,DLIO的凝结体系结构在计算上的计算效率比当前最新的ART效率高20%,而准确性提高了12%。我们通过多种公共基准和自收集的数据集进行了广泛的测试,证明了DLIO出色的本地化精度,地图质量和较低的计算开销,与四种最新的算法相比。
Aggressive motions from agile flights or traversing irregular terrain induce motion distortion in LiDAR scans that can degrade state estimation and mapping. Some methods exist to mitigate this effect, but they are still too simplistic or computationally costly for resource-constrained mobile robots. To this end, this paper presents Direct LiDAR-Inertial Odometry (DLIO), a lightweight LiDAR-inertial odometry algorithm with a new coarse-to-fine approach in constructing continuous-time trajectories for precise motion correction. The key to our method lies in the construction of a set of analytical equations which are parameterized solely by time, enabling fast and parallelizable point-wise deskewing. This method is feasible only because of the strong convergence properties in our nonlinear geometric observer, which provides provably correct state estimates for initializing the sensitive IMU integration step. Moreover, by simultaneously performing motion correction and prior generation, and by directly registering each scan to the map and bypassing scan-to-scan, DLIO's condensed architecture is nearly 20% more computationally efficient than the current state-of-the-art with a 12% increase in accuracy. We demonstrate DLIO's superior localization accuracy, map quality, and lower computational overhead as compared to four state-of-the-art algorithms through extensive tests using multiple public benchmark and self-collected datasets.