Real-time Person Orientation Estimation using Colored Pointclouds

Tim Wengefeld, Benjamin Lewandowski, Daniel Seichter, Lennard Pfennig, H. Groß
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引用次数: 10

Abstract

Robustly estimating the orientations of people is a crucial precondition for a wide range of applications. Especially for autonomous systems operating in populated environments, the orientation of a person can give valuable information to increase their acceptance. Given people's orientations, mobile systems can apply navigation strategies which take people's proxemics into account or approach them in a human like manner to perform human robot interaction (HRI) tasks. In this paper, we present an approach for person orientation estimation based on performant features extracted from colored point clouds, formerly used for a two class person attribute classification. The classification approach has been extended to the continuous domain while treating the problem of orientation estimation in real time. We compare the performance of orientation estimation treated as a multi-class as well as a regression problem. The proposed approach achieves a mean angular error (MAE) of 15.4° at 14.3ms execution time and can be further tuned to 12.2° MAE with 79.8ms execution time. This can compete with accuracies from state-of-the-art and even deep learning based skeleton estimation approaches while retaining the real-time capability on a standard CPU.
实时人的方向估计使用彩色点云
可靠地估计人的方向是广泛应用的关键前提。特别是对于在人口稠密的环境中运行的自主系统,一个人的方向可以提供有价值的信息,以增加他们的接受度。在给定人的方向的情况下,移动系统可以应用考虑人的接近性或以类似人的方式接近他们的导航策略来执行人机交互(HRI)任务。本文提出了一种基于彩色点云中提取的性能特征的人物定位估计方法,该方法以前用于两类人物属性分类。在实时处理方向估计问题的同时,将分类方法扩展到连续域。我们比较了方向估计作为一个多类问题和一个回归问题的性能。该方法在14.3ms的执行时间内实现了15.4°的平均角误差(MAE),在79.8ms的执行时间内可以进一步调整到12.2°的平均角误差。这可以与最先进的甚至基于深度学习的骨架估计方法的准确性竞争,同时保留标准CPU上的实时能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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