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A multi-sensor-based mobile robot localization framework

机译:基于多传感器的移动机器人本地化框架

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This paper presents a novel multi-sensor-based robot localization framework inspired by human coarse-to-fine recognition mechanism to realize fast and robust localization in the process of robot navigation. This localization framework consists of two parts: coarse place recognition and accurate location estimation. The coarse place recognition is realized using an onboard camera, whereas an image retrieval system is employed. The coarse localization system utilizes feature matching between the observed image and the re-ranked retrieval images to infer the possible locations of the robot. To obtain the accurate pose of robot, a modified particle filter which is mainly based on the laser radar data is implemented. To integrate the two localization stages, the current states of the particles are monitored. Once the information entropy changed greatly or the number of the effective particles is in a low level, a set of pointed particles is generated based on these estimated locations and then injected into the modified particle filter timely to ensure that enough particles are surviving around the correct pose of robot. Experiments are conducted extensively in an office environment and the results exhibits great improvement on speed and stability of mobile robot localization compared to conventional localization methods.
机译:本文提出了一种新颖的基于多传感器机器人定位框架由人类粗到细的识别机制的启发实现快速和在机器人导航的过程的鲁棒定位。这种本地化框架由两个部分组成:粗的地方认同和准确的位置估计。使用车载摄像机而被采用的图像检索系统的粗位置识别被实现。粗略定位系统利用所观察到的图像和所述特征之间的匹配重新排序检索的图像来推断机器人的可能的位置。为了获得机器人的准确姿态,这主要是基于激光雷达数据的改性颗粒过滤器中实现。要整合这两个国产化阶段,颗粒的当前状态进行监控。一旦信息熵变化较大或有效的颗粒数量是在一个低的水平,一组尖的颗粒是基于这些估计的位置产生,然后注入到改性颗粒过滤器及时,以确保足够的颗粒幸存围绕正确构成机器人。实验在办公室环境中广泛开展,其结果显示出速度和相对于传统的定位方法的移动机器人定位的稳定性极大的提高。

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