单目SLAM系统的轨迹规划

Laxit Gavshinde, A. Singh, K. Krishna
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引用次数: 3

摘要

本文提出了一种将规划与单目同步定位与制图(SLAM)系统相结合的新方法。单目SLAM,在文献中通常被称为VSLAM系统,包括从单个运动相机中恢复相机和静止世界特征的轨迹估计。这种VSLAM系统比使用深度传感器(如使用精确激光测距仪(LRF))的SLAM系统要困难得多。当相机运动受到方向急剧变化的影响时,先前实例的跟踪特征会丢失,使VSLAM估计非常不可靠,错误无法恢复。大多数情况下,会发生完全故障,这需要从新的相机轨迹中捕获新的图像序列。在此,我们提出了一种基于优化的VSLAM系统路径规划公式,通过不受高方向变化影响的路径来减少此类错误的发生。此外,我们在路径上规划了一个速度剖面,以防止特征在连续图像上明显移位,这通常被认为是鲁棒特征跟踪的关键标准。速度剖面的计算使用了我们早期工作中提出的非线性时间尺度的新概念。VSLAM系统也进行了充分的创新,可以提供平面段上的密集映射。在安装摄像头的机器人上进行了实际实验,验证了该配方的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trajectory planning for monocular SLAM systems
This paper proposes a novel method of integrating planning with Monocular Simultaneous Localization and Mapping (SLAM) systems. Monocular SLAM, typically referred to as VSLAM systems in literature consists of recovering trajectory estimates of the camera and stationary world features from a single moving camera. Such VSLAM systems are significantly more difficult than SLAM performed with depth sensors, such as using an accurate Laser Range Finder (LRF). When the camera motion is subject to steep changes in orientation, tracked features over the previous instances are lost, making VSLAM estimates highly unreliable, erroneous that cannot be recovered. Most often a complete breakdown occurs, which entails a new sequence of images to be captured from a fresh camera trajectory. Herein we propose an optimization based path planning formulation for such VSLAM systems that reduces occurence of such errors through paths that are not subject to high orientation changes. Further we plan a velocity profile over the path that prevents features from getting significantly displaced over successive images, often considered a critical criteria for robust feature tracking. The velocity profile is computed using the novel concept of non linear time scaling proposed in our earlier work. The VSLAM system is also sufficiently innovated to provide for dense mapping over planar segments. The efficacy of the formulation is verified over real experiments on a camera mounted robot.
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