Acquiring and maintaining abstract landmark chunks for cognitive robot navigation

R. Luke, J. Keller, M. Skubic, S. Senger
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引用次数: 20

Abstract

In this paper, we discuss an important aspect of cognitive mobile robotics stemming from a new project in which an adaptive working memory is investigated for robot control and learning. Specifically, our approach is built on the premise that qualitative spatial reasoning is an appropriate framework to pose, learn, and solve navigational tasks. As such, the robot must be able to acquire and maintain landmarks in a form that facilitates learning and subsequent travel. Much research on landmark recognition has focused on either point landmarks or on landmark objects that come from segmentation and feature extraction. Here, we combine these approaches in the following sense. Potential landmark points are acquired in the point mode, but aggregations of them are utilized to represent "interesting" objects that can then be maintained throughout the path. In this paper, we investigate whether consistent aggregations can be maintained and thus serve as candidate chunks for the working memory system. The approach was tested on a video sequence of 1200 frames. Examples from this outdoor video are shown to corroborate the approach.
认知机器人导航中抽象地标块的获取与维护
在本文中,我们讨论了认知移动机器人的一个重要方面,该方面源于一个研究机器人控制和学习的自适应工作记忆的新项目。具体来说,我们的方法建立在定性空间推理是提出、学习和解决导航任务的适当框架的前提下。因此,机器人必须能够以一种便于学习和后续旅行的形式获取和维护地标。许多关于地标识别的研究要么集中在点地标上,要么集中在通过分割和特征提取得到的地标对象上。在这里,我们在以下意义上将这些方法结合起来。在点模式中获得潜在的地标点,但它们的聚合被用来表示“有趣”的对象,然后可以在整个路径中维护。在本文中,我们研究了一致的聚合是否可以维持,从而作为工作记忆系统的候选块。该方法在1200帧的视频序列上进行了测试。这段户外视频中的例子证实了这种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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