Large-Scale Volumetric Scene Reconstruction using LiDAR

Tilman Kuhner, Julius Kummerle
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引用次数: 1

Abstract

Large-scale 3D scene reconstruction is an important task in autonomous driving and other robotics applications as having an accurate representation of the environment is necessary to safely interact with it. Reconstructions are used for numerous tasks ranging from localization and mapping to planning. In robotics, volumetric depth fusion is the method of choice for indoor applications since the emergence of commodity RGB-D cameras due to its robustness and high reconstruction quality. In this work we present an approach for volumetric depth fusion using LiDAR sensors as they are common on most autonomous cars. We present a framework for large-scale mapping of urban areas considering loop closures. Our method creates a meshed representation of an urban area from recordings over a distance of 3.7km with a high level of detail on consumer graphics hardware in several minutes. The whole process is fully automated and does not need any user interference. We quantitatively evaluate our results from a real world application. Also, we investigate the effects of the sensor model that we assume on reconstruction quality by using synthetic data.
基于激光雷达的大规模体景重建
大规模3D场景重建在自动驾驶和其他机器人应用中是一项重要的任务,因为拥有准确的环境表示是与环境安全交互所必需的。重建用于许多任务,从定位和映射到规划。在机器人技术中,自商用RGB-D相机出现以来,体积深度融合是室内应用的首选方法,因为它具有鲁棒性和高重建质量。在这项工作中,我们提出了一种使用激光雷达传感器进行体积深度融合的方法,因为它们在大多数自动驾驶汽车上很常见。我们提出了一个考虑环路封闭的城市地区大规模制图框架。我们的方法在几分钟内从距离为3.7公里的记录中创建一个城市区域的网格表示,并在消费者图形硬件上提供高水平的细节。整个过程是全自动的,不需要任何用户的干预。我们从实际应用中定量评估我们的结果。此外,我们还利用合成数据研究了我们假设的传感器模型对重建质量的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
6.80
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