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Localization in Urban Environments Using a Panoramic Gist Descriptor

机译:使用全景Gist描述符在城市环境中进行本地化

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Vision-based topological localization and mapping for autonomous robotic systems have received increased research interest in recent years. The need to map larger environments requires models at different levels of abstraction and additional abilities to deal with large amounts of data efficiently. Most successful approaches for appearance-based localization and mapping with large datasets typically represent locations using local image features. We study the feasibility of performing these tasks in urban environments using global descriptors instead and taking advantage of the increasingly common panoramic datasets. This paper describes how to represent a panorama using the global gist descriptor, while maintaining desirable invariance properties for location recognition and loop detection. We propose different gist similarity measures and algorithms for appearance-based localization and an online loop-closure detection method, where the probability of loop closure is determined in a Bayesian filtering framework using the proposed image representation. The extensive experimental validation in this paper shows that their performance in urban environments is comparable with local-feature-based approaches when using wide field-of-view images.
机译:近年来,用于自主机器人系统的基于视觉的拓扑定位和制图已经引起了越来越多的研究兴趣。映射更大的环境的需求要求模型具有不同的抽象级别,并且需要附加的功能才能有效处理大量数据。基于外观的本地化和大型数据集映射的最成功方法通常使用本地图像特征来表示位置。我们研究了使用全局描述符代替在城市环境中执行这些任务的可行性,并利用了日益普遍的全景数据集。本文介绍了如何使用全局gist描述符表示全景图,同时保持了所需的不变性,以便进行位置识别和环路检测。我们提出了基于外观的定位和在线回路闭合检测方法的不同要点相似性度量和算法,其中回路闭合的概率是在贝叶斯过滤框架中使用所提出的图像表示来确定的。本文广泛的实验验证表明,当使用宽视野图像时,它们在城市环境中的性能可与基于局部功能的方法相媲美。

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