多机器人地图合并的视觉位置识别

Zhao Li, S. R. U. N. Jafri, R. Chellali
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引用次数: 7

摘要

本文提出了一种新的方法,允许一组机器人团队在没有任何先验的相对位置知识的情况下合并他们的个人地图。在移动时,每个机器人获取激光数据和视频流。第一个数据用于创建单独的地图(SLAM),而图像序列用于导出访问地点的不变视觉描述。然后在机器人之间交换后者,以确定彼此靠近并共享公共位置的概率,从而启动地图合并过程。通过这种方式,通常在使用单个传感器时发生的模糊情况减少了。我们提出了我们开发的解决方案,以便提取一个紧凑的视觉描述,无论机器人的实际姿势如何,它都保持不变。在合并各自的地图之前,拥有这种描述的两个或多个机器人可以验证它们是否出现在同一个地方。该方案将激光距离数据与视觉信息融合,增强和加快了全球地图的构建,从而消除了单个地图的歧义。该方法已经在各种室内环境中进行了验证,主要是办公空间和住宅。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual place recognition for multi-robots maps merging
This paper presents a new approach allowing to a group of robots team to merge their individual maps without any a priori knowledge about their relative positions. While moving, each robot acquires laser data and a video stream. The first data are used to create individual maps (SLAM), while images sequences are used to derive invariant visual descriptions of the visited places. The later are then exchanged between robots to determine a probability of being close to each other and sharing a common place in order to initiate a map merging process. In such a way, ambiguous situations that usually occur when a single sensor is used are reduced. We present the solution we developed in order to extract a compact visual description that remains constant regardless to the actual pose of the robots. Two or more robots having such description can verify if they are or not present at the same place, before merging their respective individual maps. This scheme, e.g. the fusion of laser-range data and visual information enhances and accelerates the construction of the global map and consequently disambiguate individual maps. The validation of the approach has been performed on various indoor environments mainly, office-like spaces and houses.
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