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Incorporating a Wheeled Vehicle Model in a New Monocular Visual Odometry Algorithm for Dynamic Outdoor Environments

机译:在动态室外环境中,将轮式车辆模型纳入新的单目视觉测距算法中

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This paper presents a monocular visual odometry algorithm that incorporates a wheeled vehicle model for ground vehicles. The main innovation of this algorithm is to use the single-track bicycle model to interpret the relationship between the yaw rate and side slip angle, which are the two most important parameters that describe the motion of a wheeled vehicle. Additionally, the pitch angle is also considered since the planar-motion hypothesis often fails due to the dynamic characteristics of wheel suspensions and tires in real-world environments. Linearization is used to calculate a closed-form solution of the motion parameters that works as a hypothesis generator in a RAndom SAmple Consensus (RANSAC) scheme to reduce the complexity in solving equations involving trigonometric. All inliers found are used to refine the winner solution through minimizing the reprojection error. Finally, the algorithm is applied to real-time on-board visual localization applications. Its performance is evaluated by comparing against the state-of-the-art monocular visual odometry methods using both synthetic data and publicly available datasets over several kilometers in dynamic outdoor environments.
机译:本文提出了一种单眼视觉测距算法,该算法结合了地面车辆的轮式车辆模型。该算法的主要创新是使用单轨自行车模型来解释偏航率和侧滑角之间的关系,这是描述轮式车辆运动的两个最重要的参数。此外,还考虑了俯仰角,因为平面运动假说经常由于现实环境中车轮悬架和轮胎的动态特性而失效。线性化用于计算运动参数的闭式解,该解用作RAndom SAmple Consensus(RANSAC)方案中的假设生成器,以减少求解涉及三角学的方程式的复杂性。通过最小化重投影误差,使用找到的所有内点来优化获胜者解决方案。最后,该算法被应用于实时车载视觉定位应用。通过在动态室外环境中使用合成数据和数千米内公开可用的数据集,与最新的单眼视觉测距方法进行比较,评估其性能。

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