Can we Localize an AV from a Single Image? Deep-Geometric 6 DoF Localization in Topo-metric Maps

Punarjay Chakravarty, Tom Roussel, Gaurav Pandey, T. Tuytelaars
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Abstract

We describe a Deep-Geometric Localizer that is able to estimate the full six degrees-of-freedom (DoF) global pose of the camera from a single image in a previously mapped environment. Our map is a topo-metric one, with discrete topological nodes whose 6DOF poses are known. Each topo-node in our map also comprises of a set of points, whose 2D features and 3D locations are stored as part of the mapping process. For the mapping phase, we utilise a stereo camera and a regular stereo visual SLAM pipeline. During the localization phase, we take a single camera image, localize it to a topological node using Deep Learning, and use a geometric algorithm (PnP) on the matched 2D features (and their 3D positions in the topo map) to determine the full 6DOF globally consistent pose of the camera. Our method divorces the mapping and the localization algorithms and sensors (stereo and mono), and allows accurate 6DOF pose estimation in a previously mapped environment using a single camera. With results in simulated and real environments, our hybrid algorithm is particularly useful for autonomous vehicles (AVs) and shuttles that might repeatedly traverse the same route.
我们能从单个图像中定位AV吗?地形图中的深度几何6自由度定位
我们描述了一种深度几何定位器,它能够从先前映射环境中的单个图像中估计相机的全部六个自由度(DoF)全局姿态。我们的地图是一个拓扑度量图,具有已知的6DOF姿态的离散拓扑节点。我们地图中的每个拓扑节点也由一组点组成,这些点的2D特征和3D位置被存储为映射过程的一部分。在映射阶段,我们使用立体摄像机和常规立体视觉SLAM管道。在定位阶段,我们采用单个相机图像,使用深度学习将其定位到拓扑节点,并在匹配的2D特征(及其在地形图中的3D位置)上使用几何算法(PnP)来确定相机的完整6DOF全局一致姿态。我们的方法分离了映射和定位算法以及传感器(立体声和单声道),并允许使用单个相机在先前映射的环境中进行精确的6DOF姿态估计。通过模拟和真实环境的结果,我们的混合算法对可能反复穿越同一路线的自动驾驶汽车(AVs)和班车特别有用。
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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