论文标题
一般地点识别调查:迈向现实世界的自治年龄
General Place Recognition Survey: Towards the Real-world Autonomy Age
论文作者
论文摘要
位置识别是可以协助同时定位和映射(SLAM)进行循环闭合检测和重新定位以进行长期导航的基本模块。在过去的20美元中,该地点认可社区取得了惊人的进步,这吸引了在计算机视觉和机器人技术等多个领域的广泛研究兴趣和应用。但是,在复杂的现实世界情景中,很少有方法显示出令人鼓舞的位置识别性能,在复杂的现实世界中,长期和大规模的外观变化通常会导致故障。此外,在最先进的方法之间缺乏集成框架,该框架可以处理所有识别的挑战,其中包括外观变化,观点差异,对未知区域的稳健性以及现实世界应用中的效率。在这项工作中,我们调查针对长期本地化并讨论未来方向和机会的最先进方法。 首先,我们调查长期自治中的位置识别的制定以及现实环境中的主要挑战。然后,我们回顾了有关不同传感器方式和当前应对各种位置识别挑战的当前策略的最新作品。最后,我们回顾了现有的数据集以进行长期本地化,并介绍了不同方法的数据集和评估API。本文可以成为该地点识别社区新手的研究人员和关心长期机器人自主权的研究人员。我们还对机器人技术中经常询问的问题提供了意见:机器人是否需要准确的本地化来实现长期自治?这项工作以及我们的数据集和评估API的摘要可向机器人社区公开,网址为:https://github.com/metaslam/gprs。
Place recognition is the fundamental module that can assist Simultaneous Localization and Mapping (SLAM) in loop-closure detection and re-localization for long-term navigation. The place recognition community has made astonishing progress over the last $20$ years, and this has attracted widespread research interest and application in multiple fields such as computer vision and robotics. However, few methods have shown promising place recognition performance in complex real-world scenarios, where long-term and large-scale appearance changes usually result in failures. Additionally, there is a lack of an integrated framework amongst the state-of-the-art methods that can handle all of the challenges in place recognition, which include appearance changes, viewpoint differences, robustness to unknown areas, and efficiency in real-world applications. In this work, we survey the state-of-the-art methods that target long-term localization and discuss future directions and opportunities. We start by investigating the formulation of place recognition in long-term autonomy and the major challenges in real-world environments. We then review the recent works in place recognition for different sensor modalities and current strategies for dealing with various place recognition challenges. Finally, we review the existing datasets for long-term localization and introduce our datasets and evaluation API for different approaches. This paper can be a tutorial for researchers new to the place recognition community and those who care about long-term robotics autonomy. We also provide our opinion on the frequently asked question in robotics: Do robots need accurate localization for long-term autonomy? A summary of this work and our datasets and evaluation API is publicly available to the robotics community at: https://github.com/MetaSLAM/GPRS.