Print Email Facebook Twitter Graph Based LiDAR-Inertial Lo- calization with a Low Power Solid State LiDAR Title Graph Based LiDAR-Inertial Lo- calization with a Low Power Solid State LiDAR Author Vonk, Arjan (TU Delft Mechanical, Maritime and Materials Engineering) Contributor Smith, C.S. (mentor) van den Boom, A.J.J. (graduation committee) Voûte, R.L. (mentor) Degree granting institution Delft University of Technology Programme Mechanical Engineering | Systems and Control Date 2022-03-28 Abstract Mapping an environment with a Light Detection and Ranging (LiDAR) sensor through the use of a LiDAR Simultaneous Localization And Mapping (SLAM) algorithm is a powerful technology that allows for the creation of detailed 3D models. Recently various LiDAR sensors have been developed based on Micro-Electro-Mechanical System (MEMS) technology. These LiDARs are very low cost and considerably smaller than conventional LiDARs. They also often incorporate other sensors such as Inertial Measurement Unit (IMU)s and cameras into the same device. Performing LiDAR SLAM with MEMS based LiDAR is challenging due to the short range, the smaller Field of View (FOV) and the sensitivity to ambient light of MEMS based LiDAR. In this thesis the objective is to reduce the effect of these factors when doing LiDAR SLAM by incorporating IMU measurements into the position estimation of the sensor.A graph based positioning approach is proposed to achieve tight coupling of the IMU sensor and LiDAR position estimates. The method is made more robust by incorporating an outlier detection mechanism that reduces the influence of wrong LiDAR position estimates caused by insufficient points in the LiDAR FOV or by ambient light disturbance.The method was built in ROS and implemented on the Intel ® L515 sensor. The performance is evaluated in indoor situations with varying presence of ambient sunlight and where room size approaches the maximum limit of the sensor range. The algorithm achieves lower drift than the current state of the art for the Intel ® L515. The algorithm especially achieves altitude drift reduction and increases robustness to outliers in the LiDAR positioning. Subject SLAMLiDARReal timeSolid State LiDARGraph Based EstimationIMU Sensor FusionIMU3D ModellingLaser scanningROSIndoor Positioning To reference this document use: http://resolver.tudelft.nl/uuid:463a7637-f8bd-4a58-854d-1f3daf6f7ee6 Part of collection Student theses Document type master thesis Rights © 2022 Arjan Vonk Files PDF mscThesis_af_vonk.pdf 10.81 MB Close viewer /islandora/object/uuid:463a7637-f8bd-4a58-854d-1f3daf6f7ee6/datastream/OBJ/view