论文标题

通过二进制内容快速循环封闭检测

Fast Loop Closure Detection via Binary Content

论文作者

Wang, Han, Li, Juncheng, Ran, Maopeng, Xie, Lihua

论文摘要

环闭合检测在减少同时定位和映射(SLAM)中的定位漂移中起着重要作用。它旨在从历史数据中找到重复的场景以重置本地化。为了解决循环封闭问题,现有的方法通常利用视觉特征的匹配,这可以达到良好的准确性,但需要高度的计算资源。但是,基于特征点的方法忽略了图像的模式,即对象的形状以及图像中对象的分布。据信,这些信息通常是场景独特的,可以用来提高传统环路闭合检测方法的性能。在本文中,我们利用并将信息压缩到二进制图像中,以通过二进制内容加速现有的快速循环封闭检测方法。提出的方法可以大大降低计算成本而不牺牲召回率。它由三个部分组成:二元内容构建,快速图像检索和精确的环路闭合检测。无需离线培训。将我们的方法与最新的环路闭合检测方法进行了比较,结果表明,它以召回率和速度都优于传统方法。

Loop closure detection plays an important role in reducing localization drift in Simultaneous Localization And Mapping (SLAM). It aims to find repetitive scenes from historical data to reset localization. To tackle the loop closure problem, existing methods often leverage on the matching of visual features, which achieve good accuracy but require high computational resources. However, feature point based methods ignore the patterns of image, i.e., the shape of the objects as well as the distribution of objects in an image. It is believed that this information is usually unique for a scene and can be utilized to improve the performance of traditional loop closure detection methods. In this paper we leverage and compress the information into a binary image to accelerate an existing fast loop closure detection method via binary content. The proposed method can greatly reduce the computational cost without sacrificing recall rate. It consists of three parts: binary content construction, fast image retrieval and precise loop closure detection. No offline training is required. Our method is compared with the state-of-the-art loop closure detection methods and the results show that it outperforms the traditional methods at both recall rate and speed.

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