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ARM-VO: an efficient monocular visual odometry for ground vehicles on ARM CPUs

机译:ARM-VO:适用于ARM CPU上的地面车辆的高效单眼视觉测距仪

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摘要

Localization is among the most important prerequisites for autonomous navigation. Vision-based systems have got great attention in recent years due to numerous camera advantages over other sensors. Reducing the computational burden of such systems is an active research area making them applicable to resource-constrained systems. This paper aims to propose and compare a fast monocular approach, named ARM-VO, with two state-of-the-art algorithms, LibViso2 and ORB-SLAM2, on Raspberry Pi 3. The approach is a sequential frame-to-frame scheme that extracts a sparse set of well-distributed features and tracks them in upcoming frames using Kanade-Lucas-Tomasi tracker. A robust model selection is used to avoid degenerate cases of fundamental matrix. Scale ambiguity is resolved by incorporating known camera height above ground. The method is open-sourced [] and implemented in ROS mostly using NEON C intrinsics while exploiting the multi-core architecture of the CPU. Experiments on KITTI dataset showed that ARM-VO is 4-5 times faster and is the only method that can work almost real-time on Raspberry Pi 3. It achieves significantly better results than LibViso2 and is ranked second after ORB-SLAM2 in terms of accuracy.
机译:本地化是自主导航的最重要先决条件之一。近年来,基于视觉的系统由于其相对于其他传感器的众多相机优势而备受关注。减轻此类系统的计算负担是一个积极的研究领域,使其适用于资源受限的系统。本文旨在提出并比较快速的单眼方法,称为ARM-VO,以及在Raspberry Pi 3上使用两种最新算法LibViso2和ORB-SLAM2。该方法是逐帧的逐帧方案提取一组稀疏的分布良好的特征,并使用Kanade-Lucas-Tomasi跟踪器在即将到来的帧中对其进行跟踪。稳健的模型选择用于避免基本矩阵的退化情况。通过合并相机在地面上方的已知高度,可以解决比例尺的歧义。该方法是开源的[],并且在利用CPU的多核体系结构时主要使用NEON C内部函数在ROS中实现。在KITTI数据集上进行的实验表明,ARM-VO的速度提高了4-5倍,并且是唯一可以在Raspberry Pi 3上几乎实时运行的方法。与LibViso2相比,它获得了明显更好的结果,并且在ORB-SLAM2方面排名第二。准确性。

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