People tracking using integrated sensors for human robot interaction

Yoshinori Kobayashi, Y. Kuno
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引用次数: 30

Abstract

In human-human interaction, position and orientation of participants' bodies and faces play an important role. Thus, robots need to be able to detect and track human bodies and faces, and obtain human positions and orientations to achieve effective human-robot interaction. It is difficult, however, to robustly obtain such information from video cameras alone in complex environments. Hence, we propose to use integrated sensors that are composed of a laser range sensor and an omni-directional camera. A Rao-Blackwellized particle filter framework is employed to track the position and orientation of both bodies and heads of people based on the distance data and panorama images captured from the laser range sensor and the omni-directional camera. In addition to the tracking techniques, we present two applications of our integrated sensor system. One is a robotic wheelchair moving with a caregiver; the sensor system detects and tracks the caregiver and the wheelchair moves with the caregiver based on the tracking results. The other is a museum guide robot that explains exhibits to multiple visitors; the position and orientation data of visitors' bodies and faces enable the robot to distribute its gaze to each of multiple visitors to keep their attention while talking.
人跟踪采用集成传感器进行人机交互
在人与人之间的互动中,参与者的身体和面部的位置和方向起着重要的作用。因此,机器人需要能够检测和跟踪人的身体和面部,并获得人的位置和方向,以实现有效的人机交互。然而,在复杂的环境中,仅从摄像机中获得这些信息是很困难的。因此,我们建议使用由激光距离传感器和全向相机组成的集成传感器。基于激光测距传感器和全向相机采集的距离数据和全景图像,采用rao - blackwell化粒子滤波框架对人体和头部的位置和方向进行跟踪。除了跟踪技术外,我们还介绍了我们的集成传感器系统的两个应用。一个是机器人轮椅,由护理员移动;传感器系统检测和跟踪护理人员,轮椅根据跟踪结果随护理人员移动。另一个是博物馆导览机器人,可以向多名游客解释展品;游客身体和面部的位置和方向数据使机器人能够将目光分散到多个游客中的每个人身上,从而在交谈时保持他们的注意力。
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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