PL-ISLAM: an Accurate Monocular Visual-Inertial SLAM with Point and Line Features

Haobo Wang, Lianwu Guan, Xilin Yu, Zibin Zhang
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引用次数: 1

Abstract

At present, most of the visual Simultaneous Localization and Mapping (SLAM) systems rely on the surrounding point features to achieve acceptable localization and mapping. However, the number of point features is insufficient in the low-texture environments, so the performance of these SLAM systems will be significantly reduced. In this research, a PLISLAM system that integrates point features, line features and Inertial Measurement Unit (IMU) is proposed to implement high-precision positioning and mapping for dynamic vehicles. Specifically, a state-of-the-art SLAM scheme ORBSLAM3 is built at first. Then, its theoretical formulation is derived step by step to handle the environmental line features and the Bundle Adjustment (BA) is integrated to optimize the data. Finally, the system performance is verified through the EuRoC dataset, the results demonstrate its accuracy could be improved by adding the line features especially in scenes with rich line features.
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l- islam:一种具有点和线特征的精确单目视觉惯性SLAM
目前,大多数视觉同步定位与制图(SLAM)系统都依赖于周围点的特征来实现可接受的定位与制图。然而,在低纹理环境下,点特征的数量不足,会大大降低SLAM系统的性能。本文提出了一种集成点特征、线特征和惯性测量单元(IMU)的PLISLAM系统,用于实现动态车辆的高精度定位与制图。具体而言,首先构建了最先进的SLAM方案ORBSLAM3。然后,逐步推导出处理环境线特征的理论公式,并结合Bundle Adjustment (BA)对数据进行优化。最后,通过EuRoC数据集验证了该系统的性能,结果表明,特别是在线条特征丰富的场景中,添加线条特征可以提高系统的精度。
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