Author:
Sobczak Łukasz,Filus Katarzyna,Domańska Joanna,Domański Adam
Abstract
AbstractOne of the most challenging topics in robotics is simultaneous localization and mapping (SLAM) in the indoor environments. Due to the fact that Global Navigation Satellite Systems cannot be successfully used in such environments, different data sources are used for this purpose, among others light detection and ranging (LiDARs ), which have advanced from numerous other technologies. Other embedded sensors can be used along with LiDARs to improve SLAM accuracy, e.g. the ones available in the Inertial Measurement Units and wheel odometry sensors. Evaluation of different SLAM algorithms and possible hardware configurations in real environments is time consuming and expensive. In our study, we evaluate the accuracy of mapping and localization (based on Absolute Trajectory Error and Relative Pose Error). Our use case is a robot used for room decontamination. The results for a small room show that for our robot the best hardware configuration consists of three LiDARs 2D, IMU and wheel odometry sensors. On the other hand, for long hallways, a configuration with one LiDAR 3D sensor and IMU works better and more stable. We also described a general approach together with tools and procedures that can be used to find the best sensor setup in simulation.
Publisher
Springer Science and Business Media LLC
Reference46 articles.
1. Doaa, M., Mohammed, A., Salem, M., Ramadan, H. & Roushdy, M. I. Comparison of optimization techniques for 3d graph-based slam. Recent Adv. Inf. Sci. (2013).
2. Meng, X., Wang, H. & Liu, B. A robust vehicle localization approach based on gnss/imu/dmi/lidar sensor fusion for autonomous vehicles. Sensors 17, 2140 (2017).
3. Khan, M. U. et al. A comparative survey of lidar-slam and lidar based sensor technologies. In 2021 Mohammad Ali Jinnah University International Conference on Computing (MAJICC) 1–8 (IEEE, 2021).
4. Yue, X., Wu, B., Seshia, S. A., Keutzer, K. & Sangiovanni-Vincentelli, A. L. A lidar point cloud generator: From a virtual world to autonomous driving. In Proceedings of the 2018 ACM on International Conference on Multimedia Retrieval 458–464 (2018).
5. Ren, Z., Wang, L. & Bi, L. Robust gicp-based 3d lidar slam for underground mining environment. Sensors 19, 2915 (2019).
Cited by
6 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献