SLAM and Map Learning using Hybrid Semantic Graph Optimization *

A. Agrawal, Dhruv Agarwal, Mehul Arora, Ritik Mahajan, Shivansh Beohar, Lhilo Kenye, R. Kala
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引用次数: 1

Abstract

Visual Simultaneous Localization and Mapping using budget-grade cameras only faces the challenges of continuous drifts that accumulate with time. While loop closure techniques mitigate the effects, they are applicable only when the robot completes a loop, which is a rarity in everyday navigation. The motion blur and smaller resolution of budget cameras further reduce the accuracy of SLAM. In this paper, we aim to solve the problem of active drift correction for a low-cost robot to solve autonomous navigation using the semantic map. Semantic maps have been used previously for re-localization but are useful only when the semantic maps themselves are highly accurate which is not realizable for budget robots. The semantic maps also face problems of correspondence matching in areas rich with recurrent semantics. To alleviate the same effects, the robot performs SLAM using a hybrid graph optimization consisting of semantic points whose pose is obtained from the semantic map database, and the non-semantic point features. The semantic map corrects for the drift, while the non-semantic features apply local smoothing that helps in mitigating the errors of the semantic map. They also apply robustness against errors in correspondence matching. The semantic graph may itself have errors, which are hence learned with time as the robot navigates. The robot adds new semantic objects into the database if it observes them, while the robot also mends the position based on the new observations. The initial semantic map is made using images captured by a camera on a few known poses, based on which it adds the observed semantics.
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基于混合语义图优化的SLAM和地图学习*
使用预算级相机的视觉同步定位和绘图只面临随着时间积累的连续漂移的挑战。虽然闭环技术减轻了影响,但它们只适用于机器人完成一个循环,这在日常导航中是罕见的。预算相机的运动模糊和较小的分辨率进一步降低了SLAM的精度。本文旨在解决基于语义地图的低成本机器人自主导航的主动漂移校正问题。语义地图以前用于重新定位,但只有当语义地图本身高度精确时才有用,而这对于预算机器人是无法实现的。语义映射在具有丰富递归语义的区域也面临对应匹配问题。为了减轻同样的影响,机器人使用由语义地图数据库中获得的语义点的姿态和非语义点特征组成的混合图优化来执行SLAM。语义图对漂移进行校正,而非语义特征应用局部平滑,有助于减轻语义图的误差。它们还对通信匹配中的错误应用了鲁棒性。语义图本身可能有错误,因此随着机器人导航的时间推移,这些错误会被学习。如果机器人观察到新的语义对象,则将其添加到数据库中,同时机器人还会根据新的观察结果修正位置。最初的语义地图是使用相机在几个已知姿势上拍摄的图像制作的,并在此基础上添加观察到的语义。
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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