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Self-Diagnosis of Localization Status for Autonomous Mobile Robots

机译:自主移动机器人定位状态的自诊断

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摘要

It is essential to provide reliable localization results to allow mobile robots to navigate autonomously. Even though many state-of-the-art localization schemes have so far shown satisfactory performance in various environments, localization has still been difficult under specific conditions, such as extreme environmental changes. Since many robots cannot diagnose for themselves whether the localization results are reliable, there can be serious autonomous navigation problems. To solve this problem, this study proposes a self-diagnosis scheme for the localization status. In this study, two indicators are empirically defined for the self-diagnosis of localization status. Each indicator shows significant changes when there are difficulties in light detection and ranging (LiDAR) sensor-based localization. In addition, the classification model of localization status is trained through machine learning using the two indicators. A robot can diagnose the localization status itself using the proposed classification model. To verify the usefulness of the proposed method, we carried out localization experiments in real environments. The proposed classification model successfully detected situations where the localization accuracy is significantly degraded due to extreme environmental changes.
机译:提供可靠的定位结果以允许移动机器人自主导航至关重要。尽管到目前为止,许多最新的本地化方案在各种环境中均表现出令人满意的性能,但是在特定条件下(例如极端的环境变化),本地化仍然很困难。由于许多机器人无法自行诊断定位结果是否可靠,因此可能会出现严重的自主导航问题。为了解决这个问题,本研究提出了一种针对定位状态的自诊断方案。在这项研究中,根据经验定义了两个指标,用于定位状态的自我诊断。当基于光检测和测距(LiDAR)传感器的定位存在困难时,每个指示器都会显示出显着变化。另外,使用两个指标通过机器学习来训练定位状态的分类模型。机器人可以使用建议的分类模型自行诊断定位状态。为了验证该方法的有效性,我们在真实环境中进行了定位实验。所提出的分类模型成功地检测到由于极端环境变化而导致定位精度显着降低的情况。

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