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People Detection in 3d Point Clouds Using Local Surface Normals

机译:人们在3D点云中检测使用局部表面法线

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The ability to detect people in domestic and unconstrained environments is crucial for every service robot. The knowledge where people are is required to perform several tasks such as navigation with dynamic obstacle avoidance and human-robot-interaction. In this paper we propose a people detection approach based on 3d data provided by a RGB-D camera. We introduce a novel 3d feature descriptor based on Local Surface Normals (LSN) which is used to learn a classifier in a supervised machine learning manner. In order to increase the systems flexibility and to detect people even under partial occlusion we introduce a top-down/bottom-up segmentation. We deployed the people detection system on a real-world service robot operating at a reasonable frame rate of 5Hz. The experimental results show that our approach is able to detect persons in various poses and motions such as sitting, walking, and running.
机译:能够检测国内和不受约束环境中人们的能力对于每个服务机器人至关重要。人们所需要的知识来执行多种任务,例如具有动态障碍避免和人机交互的导航。在本文中,我们提出了一种基于RGB-D相机提供的3D数据的人员检测方法。我们介绍基于本地表面法线(LSN)的新型3D特征描述符,用于以监督机器学习方式学习分类器。为了提高系统灵活性,即使在部分遮挡下检测人员,我们也会引入自上而下/自下而上的分割。我们将人民检测系统部署在现实世界的服务机器人上以合理的帧速率为5Hz运行。实验结果表明,我们的方法能够检测各种姿势和运动的人,如坐着,走路和跑步。

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