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Intrinsic Calibration of Depth Cameras for Mobile Robots Using a Radial Laser Scanner

机译:使用径向激光扫描仪对移动机器人的深度相机进行内部校准

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Depth cameras, typically in RGB-D configurations, are common devices in mobile robotic platforms given their appealing features: high frequency and resolution, low price and power requirements, among others. These sensors may come with significant, non-linear errors in the depth measurements that jeopardize robot tasks, like free-space detection, environment reconstruction or visual robot-human interaction. This paper presents a method to calibrate such systematic errors with the help of a second, more precise range sensor, in our case a radial laser scanner. In contrast to what it may seem at first, this does not mean a serious limitation in practice since these two sensors are often mounted jointly in many mobile robotic platforms, as they complement well each other. Moreover, the laser scanner can be used just for the calibration process and get rid of it after that. The main contributions of the paper are: (i) the calibration is formulated from a probabilistic perspective through a Maximum Likelihood Estimation problem, and (ii) the proposed method can be easily executed automatically by mobile robotic platforms. To validate the proposed approach we evaluated for both, local distortion of 3D planar reconstructions and global shifts in the measurements, obtaining considerably more accurate results. A C++ open-source implementation of the presented method has been released for the benefit of the community.
机译:深度摄像头(通常为RGB-D配置)是移动机器人平台中的常见设备,它们具有吸引人的功能:高频和高分辨率,低廉的价格和功耗要求等。这些传感器在深度测量中可能会出现严重的非线性误差,这些误差会危害机器人的任务,例如自由空间检测,环境重建或视觉上的机器人与人的互动。本文介绍了一种借助第二个更精确的距离传感器(在我们的情况下为径向激光扫描仪)来校准此类系统误差的方法。与起初看起来的相反,这并不意味着在实践中会受到严重限制,因为这两个传感器通常相互结合在一起,因此经常安装在许多移动机器人平台中。此外,激光扫描仪可仅用于校准过程,然后再将其删除。本文的主要贡献是:(i)通过最大似然估计问题从概率角度制定校准,并且(ii)所提出的方法可以很容易地通过移动机器人平台自动执行。为了验证所提出的方法,我们对3D平面重建的局部失真和测量中的整体偏移进行了评估,从而获得了更为准确的结果。为了社区的利益,已发布了所提出方法的C ++开源实现。

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