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Graph Structure-Based Simultaneous Localization and Mapping Using a Hybrid Method of 2D Laser Scan and Monocular Camera Image in Environments with Laser Scan Ambiguity

机译:激光扫描歧义环境中使用二维激光扫描和单眼相机图像混合方法的基于图结构的同时定位和映射

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Localization is an essential issue for robot navigation, allowing the robot to perform tasks autonomously. However, in environments with laser scan ambiguity, such as long corridors, the conventional SLAM (simultaneous localization and mapping) algorithms exploiting a laser scanner may not estimate the robot pose robustly. To resolve this problem, we propose a novel localization approach based on a hybrid method incorporating a 2D laser scanner and a monocular camera in the framework of a graph structure-based SLAM. 3D coordinates of image feature points are acquired through the hybrid method, with the assumption that the wall is normal to the ground and vertically flat. However, this assumption can be relieved, because the subsequent feature matching process rejects the outliers on an inclined or non-flat wall. Through graph optimization with constraints generated by the hybrid method, the final robot pose is estimated. To verify the effectiveness of the proposed method, real experiments were conducted in an indoor environment with a long corridor. The experimental results were compared with those of the conventional GMappingapproach. The results demonstrate that it is possible to localize the robot in environments with laser scan ambiguity in real time, and the performance of the proposed method is superior to that of the conventional approach.
机译:本地化是机器人导航的基本问题,它允许机器人自主执行任务。但是,在激光扫描含糊不清的环境(例如长走廊)中,利用激光扫描仪的常规SLAM(同时定位和地图绘制)算法可能无法可靠地估计机器人的姿势。为了解决此问题,我们提出了一种新颖的定位方法,该方法基于在基于图结构的SLAM框架中结合了2D激光扫描仪和单眼相机的混合方法。通过混合方法获取图像特征点的3D坐标,并假设墙垂直于地面且垂直平坦。但是,此假设可以缓解,因为后续的特征匹配过程会拒绝倾斜或非平坦壁上的异常值。通过使用混合方法生成的约束进行图优化,可以估算最终的机器人姿态。为了验证该方法的有效性,在具有长走廊的室内环境中进行了实际实验。将实验结果与常规GMapping方法进行了比较。结果表明,可以在具有激光扫描歧义性的环境中实时定位机器人,并且该方法的性能优于传统方法。

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