基于置信度跟踪方法的杂乱动态室内环境中仿人导航运动目标检测

Prabin Kumar Rath, A. Ramirez-Serrano, D. K. Pratihar
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引用次数: 0

摘要

人形机器人的感知与其他机器人系统的感知相比具有挑战性。类人机器人中的传感器处于恒定的运动状态,其姿态估计受到其数十个自由度的恒定运动的影响,进而影响对被感测环境物体的估计。这在高度杂乱的动态空间(如室内办公环境)中尤其成问题。其中一个挑战是识别所有独立移动/动态实体的存在,例如在机器人周围行走的人。如果可以获得,这些信息将有助于类人机器人绘制更好的地图,更好地规划它们在非结构化受限动态环境中的运动。提出了一种基于相对运动的运动目标检测管道和一种新的置信度跟踪方法,该方法检测机器人周围独立运动实体对应的点簇。检测不依赖于对目标实体的先验知识。基于体素网格协方差的地平面去除工具用于分离环境中物体的点簇。采用Velodyne VLP-16激光雷达和安装在云台稳定的人形头部的Intel-T265 IMU对所提出的方法进行了测试。实验结果表明,该方法具有较好的实时计算时间复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Moving object detection for humanoid navigation in cluttered dynamic indoor environments using a confidence tracking approach
Humanoid robot perception is challenging compared to perception in other robotic systems. The sensors in a humanoid are in constant state of motion and their pose estimation is affected by the constant motion of the tens of DOFs (Degrees of Freedom) which in turn affect the estimation of the sensed environmental objects. This is especially problematic in highly cluttered dynamic spaces such as indoor office environments. One of the challenges is identifying the presence of all independent moving/dynamic entities such as people walking around the robot. If available, such information would assist humanoids to build better maps and better plan their motions in unstructured confined dynamic environments. This paper presents a moving object detection pipeline based on relative motion and a novel confidence tracking approach that detects point clusters corresponding to independent moving entities around the robot. The detection does not depend on prior knowledge about the target entity. A ground plane removal tool based on voxel grid covariance is used for separating point clusters of objects within the environment. The proposed method was tested using a Velodyne VLP-16 LiDAR and an Intel-T265 IMU mounted on a gimbal-stabilized humanoid head. The experiments show promising results with a real-time computational time complexity.
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