LOAM: Lidar Odometry and Mapping in Real-time
Ji Zhang,Sanjiv Singh +1 more
- 12 Jul 2014
Vol. 10
TL;DR: The method achieves both low-drift and low-computational complexity without the need for high accuracy ranging or inertial measurements and can achieve accuracy at the level of state of the art offline batch methods.
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Abstract: We propose a real-time method for odometry and mapping using range measurements from a 2-axis lidar moving in 6-DOF. The problem is hard because the range measurements are received at different times, and errors in motion estimation can cause mis-registration of the resulting point cloud. To date, coherent 3D maps can be built by off-line batch methods, often using loop closure to correct for drift over time. Our method achieves both low-drift and low-computational complexity without the need for high accuracy ranging or inertial measurements. The key idea in obtaining this level of performance is the division of the complex problem of simultaneous localization and mapping, which seeks to optimize a large number of variables simultaneously, by two algorithms. One algorithm performs odometry at a high frequency but low fidelity to estimate velocity of the lidar. Another algorithm runs at a frequency of an order of magnitude lower for fine matching and registration of the point cloud. Combination of the two algorithms allows the method to map in real-time. The method has been evaluated by a large set of experiments as well as on the KITTI odometry benchmark. The results indicate that the method can achieve accuracy at the level of state of the art offline batch methods.
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Citations
Lidar-Monocular Visual Odometry with Genetic Algorithm for Parameter Optimization.
Adarsh Sehgal,Ashutosh Singandhupe,Hung Manh La,Alireza Tavakkoli,Sushil J. Louis +4 more
- 07 Oct 2019
TL;DR: The use of Genetic Algorithm to optimize parameters with reference to LIMO and maximize LIMO's localization and motion estimation performance is argued and it is shown that the genetic algorithm helps LIMO to reduce translation error in different datasets.
17
What Are We Missing? Occlusion in Laser Scanning Point Clouds and Its Impact on the Detection of Single-Tree Morphologies and Stand Structural Variables
TL;DR: In this paper , the authors address the issue of occlusion when scanning a spruce (Picea abies (L.) H.Karst) and beech (Fagus sylvatica L.) forest with a mobile laser scanner by making use of a unique study site setup.
Isprs benchmark on multisensory indoor mapping and positioning
Cheng Wang,Yudi Dai,Naser El-Sheimy,Chenglu Wen,Guenther Retscher,Z. Kang,Andrea Maria Lingua +6 more
TL;DR: The MiMAP project provides a common framework for the evaluation and comparison of LiDAR-based SLAM, BIM feature extraction, and smartphone-based indoor positioning methods.
Online Map Vectorization for Autonomous Driving: A Rasterization Perspective
TL;DR: In this article , the authors propose MapVR (Map Vectorization via Rasterization), a framework that applies differentiable rasterization to vectorized outputs and then performs precise and geometry-aware supervision on rasterized HD maps.
16
Perception-aided Visual-Inertial Integrated Positioning in Dynamic Urban Areas
Xiwei Bai,Bo Zhang,Weisong Wen,Li-Ta Hsu,Huiyun Li +4 more
- 23 Apr 2020
TL;DR: The result shows that the proposed method can effectively mitigate the impacts of the dynamic objects and improved accuracy is obtained.
16
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