基于三维激光雷达跟踪的人体分类在线学习

Zhi Yan, T. Duckett, N. Bellotto
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引用次数: 92

摘要

在服务机器人中,人类的检测和跟踪是必须考虑的重要方面,因为机器人经常共享其工作空间并与人类密切互动。本文提出了一种用于三维激光雷达扫描中人类分类的在线学习框架,利用鲁棒的多目标跟踪来避免对人类专家数据注释的需要。随着时间的推移,系统通过对机器人收集的样本在线重新训练分类器来迭代学习。我们的方法的一个新颖之处在于,训练数据中的错误可以使用基于3D激光雷达的跟踪提供的信息来纠正。为了做到这一点,我们实现了一种有效的潜在人体目标的三维聚类检测器。我们使用一个新的3D激光雷达数据集来评估这个框架,该数据集是在一个大型室内公共空间中移动的人,该数据集可供研究界使用。实验分析了聚类检测器的实时性能,并表明我们的在线学习人类分类器与离线版本相匹配,在某些情况下甚至优于离线版本。
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Online learning for human classification in 3D LiDAR-based tracking
Human detection and tracking are essential aspects to be considered in service robotics, as the robot often shares its workspace and interacts closely with humans. This paper presents an online learning framework for human classification in 3D LiDAR scans, taking advantage of robust multi-target tracking to avoid the need for data annotation by a human expert. The system learns iteratively by retraining a classifier online with the samples collected by the robot over time. A novel aspect of our approach is that errors in training data can be corrected using the information provided by the 3D LiDAR-based tracking. In order to do this, an efficient 3D cluster detector of potential human targets has been implemented. We evaluate the framework using a new 3D LiDAR dataset of people moving in a large indoor public space, which is made available to the research community. The experiments analyse the real-time performance of the cluster detector and show that our online learned human classifier matches and in some cases outperforms its offline version.
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