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Probabilistic Egocentric Motion Correction of Lidar Point Cloud and Projection to Camera Images for Moving Platforms

机译:LIDAR点云和投影对移动平台相机图像的概率性Egentric运动校正

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The fusion of sensor data from heterogeneous sensors is crucial for robust perception in various robotics applications that involve moving platforms, for instance, autonomous vehicle navigation. In particular, combining camera and lidar sensors enables the projection of precise range information of the surrounding environment onto visual images. It also makes it possible to label each lidar point with visual segmentation/classification results for 3D mapping, which facilitates a higher level understanding of the scene. The task is however considered non-trivial due to intrinsic and extrinsic sensor calibration, and the distortion of lidar points resulting from the ego-motion of the platform. Despite the existence of many lidar ego-motion correction methods, the errors in the correction process due to uncertainty in egomotion estimation are not possible to remove completely. It is thus essential to consider the problem a probabilistic process where the ego-motion estimation uncertainty is modelled and considered consistently. The paper investigates the probabilistic lidar ego-motion correction and lidar-to-camera projection, where both the uncertainty in the ego-motion estimation and time jitter in sensory measurements are incorporated. The proposed approach is validated both in simulation and using real-world data collected from an electric vehicle retrofitted with wide-angle cameras and a 16-beam scanning lidar.
机译:传感器数据从传感器异质融合是在涉及移动平台的各种机器人应用,例如,自主车辆导航健壮感知的关键。特别地,结合摄像机和激光雷达传感器使得能够对周围环境的精确的范围信息到视觉图像的投影。这也使得有可能标记有视觉分割/分类结果为3D映射,这有利于该场景的更高水平的理解每个激光雷达点。然而,任务被认为是不平凡的,由于内在的和外在的传感器校准,并且从所述平台的自运动导致激光雷达点的失真。尽管许多激光雷达自身运动校正方法的存在,在修正过程中由于自身运动估计不确定性的错误是不可能完全删除。考虑该问题的概率过程,其中自我的运动估计的不确定性进行建模和考虑一贯因此,至关重要。本文研究的概率激光雷达自运动校正和激光雷达对照相机投影,其中两个中相应的自运动估计在感官测量不确定性和时间抖动被并入。无论是在模拟和使用从与广角相机改装的电动车辆收集真实世界的数据和16的光束扫描的激光雷达所提出的方法进行了验证。

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