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Condition-Invariant Robot Localization Using Global Sequence Alignment of Deep Features

机译:条件 - 不变的机器人本地化使用全局序列对齐的深度特征

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摘要

Localization is one of the essential process in robotics, as it plays an important role in autonomous navigation, simultaneous localization, and mapping for mobile robots. As robots perform large-scale and long-term operations, identifying the same locations in a changing environment has become an important problem. In this paper, we describe a robust visual localization system under severe appearance changes. First, a robust feature extraction method based on a deep variational autoencoder is described to calculate the similarity between images. Then, a global sequence alignment is proposed to find the actual trajectory of the robot. To align sequences, local fragments are detected from the similarity matrix and connected using a rectangle chaining algorithm considering the robot’s motion constraint. Since the chained fragments provide reliable clues to find the global path, false matches on featureless structures or partial failures during the alignment could be recovered and perform accurate robot localization in changing environments. The presented experimental results demonstrated the benefits of the proposed method, which outperformed existing algorithms in long-term conditions.
机译:本地化是机器人中的重要过程之一,因为它在自主导航,同时定位和移动机器人的映射中起着重要作用。随着机器人执行大规模和长期操作,在不断变化的环境中识别相同的位置已成为一个重要问题。在本文中,我们在严重的外观变化下描述了一种强大的视觉本地化系统。首先,描述了一种基于深变化自动级别的强大特征提取方法来计算图像之间的相似性。然后,提出了全局序列对准以找到机器人的实际轨迹。为了对准序列,从相似性矩阵检测局部片段并考虑机器人的运动约束,使用矩形链接算法连接。由于链式片段提供可靠的线索来查找全局路径,因此可以在更改环境中恢复并执行准确的机器人本地化在更改环境中的无特征结构或部分故障上的假匹配。所呈现的实验结果表明了该方法的益处,这在长期条件下表现出现有的现有算法。

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