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Online learning for 3D LiDAR-based human detection: experimental analysis of point cloud clustering and classification methods

机译:基于3D LIDAR的人体检测在线学习:点云聚类和分类方法的实验分析

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This paper presents a system for online learning of human classifiers by mobile service robots using 3D LiDAR sensors, and its experimental evaluation in a large indoor public space. The learning framework requires a minimal set of labelled samples (e.g. one or several samples) to initialise a classifier. The classifier is then retrained iteratively during operation of the robot. New training samples are generated automatically using multi-target tracking and a pair of "experts" to estimate false negatives and false positives. Both classification and tracking utilise an efficient real-time clustering algorithm for segmentation of 3D point cloud data. We also introduce a new feature to improve human classification in sparse, long-range point clouds. We provide an extensive evaluation of our the framework using a 3D LiDAR dataset of people moving in a large indoor public space, which is made available to the research community. The experiments demonstrate the influence of the system components and improved classification of humans compared to the state-of-the-art.
机译:本文介绍了移动服务机器人使用3D LIDAR传感器的人类分类器在线学习系统,以及在大型室内公共空间中的实验评价。学习框架需要最小的标记样本(例如一个或多个样本),以初始化分类器。然后在机器人的操作期间迭代地再次再次再次再培训分级器。使用多目标跟踪和一对“专家”自动生成新的培训样本,以估计假底片和误报。分类和跟踪都利用了一个有效的实时聚类算法,用于分割3D点云数据。我们还介绍了一个新功能,以改善稀疏,远程云的人类分类。我们对我们的框架提供了广泛的评估,我们使用在一个大型室内公共空间中移动的人们的3D LIDAR数据集进行了广泛的框架,这是对研究界提供的。实验表明,与现有技术相比,系统组件的影响和改进的人类分类。

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