基于特征变化检测的移动机器人终身自主性研究

Erik Derner, Clara Gómez, A. C. Hernández, R. Barber, R. Babuška
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引用次数: 2

摘要

自主移动机器人在许多工业和家庭环境中变得越来越重要。处理不可预见的情况是一个必须解决的难题,以便更接近终身自治的最终目标。在移动机器人定位或导航等基于计算机视觉的方法中,主要问题之一是场景的动态性。如果不检测和管理动态环境中常见的变化,机器人的自主操作可能会变得不可靠。移动椅子,打开和关闭门窗,更换桌子上的物品和其他变化使许多传统方法失败。针对这一问题,提出了一种基于局部视觉特征相似性的变化检测方法。该算法的核心思想是区分场景中重要的稳定区域和变化区域。为了评估变化检测算法,我们设计了一个简单的基于特征匹配的视觉定位框架,并进行了一系列真实世界的定位实验。结果表明,与不使用变化检测的基线定位方法相比,变化检测方法大大提高了机器人定位的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Life-Long Autonomy of Mobile Robots Through Feature-Based Change Detection
Autonomous mobile robots are becoming increasingly important in many industrial and domestic environments. Dealing with unforeseen situations is a difficult problem that must be tackled in order to move closer to the ultimate goal of life-long autonomy. In computer vision-based methods employed on mobile robots, such as localization or navigation, one of the major issues is the dynamics of the scenes. The autonomous operation of the robot may become unreliable if the changes that are common in dynamic environments are not detected and managed. Moving chairs, opening and closing doors or windows, replacing objects on the desks and other changes make many conventional methods fail. To deal with that, we present a novel method for change detection based on the similarity of local visual features. The core idea of the algorithm is to distinguish important stable regions of the scene from the regions that are changing. To evaluate the change detection algorithm, we have designed a simple visual localization framework based on feature matching and we have performed a series of real-world localization experiments. The results have shown that the change detection method substantially improves the accuracy of the robot localization, compared to using the baseline localization method without change detection.
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