With the recent advances in autonomous driving and the decreasing cost of LiDARs, the use of multi-modal sensor systems is on the rise. However, in order to make use of the information provided by a variety of complimentary sensors, it is necessary to accurately calibrate them. We take advantage of recent advances in computer graphics and implicit volumetric scene representation to tackle the problem of multi-sensor spatial and temporal calibration. Thanks to a new formulation of the implicit model optimization, we are able to jointly optimize calibration parameters along with scene representation based on radiometric and geometric measurements. Our method enables accurate and robust calibration from data captured in uncontrolled and unstructured urban environments, making our solution more scalable than existing calibration solutions. We demonstrate the accuracy and robustness of our method in urban scenes typically encountered in autonomous driving scenarios.
翻译:由于最近自主驾驶的进步和LiDARs成本的下降,多式传感器系统的使用呈上升趋势,然而,为了利用各种辅助传感器提供的信息,有必要准确校准它们。我们利用计算机图形和隐性体积场面演示的最新进展,解决多传感器空间和时间校准问题。由于新的隐性模型优化配方,我们得以联合优化校准参数,同时根据辐射度和几何测量进行场景显示。我们的方法使得从无控制和无结构的城市环境中收集的数据中进行准确和有力的校准,使我们的解决方案比现有的校准解决方案更可伸缩。我们展示了我们在城市环境中通常在自主驾驶情况下遇到的方法的准确性和稳健性。</s>