D3VIL-SLAM:用于室外环境的三维视觉惯性激光雷达SLAM

Matteo Frosi, Matteo Matteucci
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引用次数: 0

摘要

自动驾驶和3D地图是一些与地面车辆实时六自由度姿态估计相关的应用,特别是在室外(例如城市)环境中。在过去的几十年里,已经提出了许多系统,其中大多数系统只处理来自一个传感器的数据,同时也在努力保持准确性和性能的平衡。在本文中,我们提出了D3VIL-SLAM,它扩展了现有的基于lidar的SLAM系统ART-SLAM,包括惯性和视觉信息。前端包括三个分支,分别通过利用激光、视觉和惯性数据来执行短期数据关联,即跟踪。所有来自激光雷达扫描和图像的运动估计和环路约束用于构建鲁棒的g20姿态图,随后对其进行优化以最好地满足所有运动约束。我们将该系统的精度与最先进的SLAM方法进行了比较,结果表明D3VIL-SLAM更准确,在保持实时性能的同时,可以生成非常详细的3D地图。最后,我们进行了一个简短的消融研究,有不同的局限性(例如,只允许图像)。所有的实验活动都是通过使用KITTI数据集评估估计的轨迹位移来完成的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
D3VIL-SLAM: 3D Visual Inertial LiDAR SLAM for Outdoor Environments
Autonomous driving and 3D mapping are a few applications associated with real-time six-degrees-of-freedom pose estimation of ground vehicles, especially in outdoor (e.g., urban) environments. During the past decades, many systems have been proposed, with the majority working on data coming from only one sensor, while also struggling to keep accuracy and performance balanced. In this paper, we present D3VIL-SLAM, which extends an existing LiDAR-based SLAM system, ART-SLAM, to include inertial and visual information. The front-end comprises three branches that perform short-term data association, i.e., tracking, by exploiting laser, visual, and inertial data, respectively. All motion estimates and loop constraints derived from both LiDAR scans and images are used to build a robust g2o pose graph, which is later optimized to best satisfy all motion constraints. We compare the accuracy of our system with state-of-the-art SLAM methods, showing that D3VIL-SLAM is more accurate and produces highly detailed 3D maps while retaining real-time performance. Lastly, we perform a brief ablation study with different limitations (e.g., only images are allowed). All experimental campaigns are done by evaluating the estimated trajectory displacement using the KITTI dataset.
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