Fast learning for customizable head pose recognition in robotic wheelchair control

C. Bauckhage, Thomas Käster, Andrei M. Rotenstein
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引用次数: 8

Abstract

In the PLAYBOT project, we aim at assisting disabled children at play. To this end, we are developing a semi autonomous robotic wheelchair. It is equipped with several visual sensors and a robotic manipulator and thus conveniently enhances the innate capabilities of a disabled child. In addition to a touch screen, the child may control the wheelchair using simple head movements. As control based on head posture requires reliable face detection and head pose recognition, we are in need of a robust technique that may effortlessly be tailored to individual users. In this paper, we present a multilinear classification algorithm for fast and reliable face detection. It trains within seconds and thus can easily be customized to the home environment of a disabled child. Subsequent head pose recognition is done using support vector machines. Experimental results show that this two stage approach to head pose-based robotic wheelchair control performs fast and very robust
机器人轮椅控制中可定制头部姿态识别的快速学习
在PLAYBOT项目中,我们的目标是帮助残疾儿童玩耍。为此,我们正在开发一种半自动机器人轮椅。它配备了几个视觉传感器和一个机器人操纵器,从而方便地提高了残疾儿童的先天能力。除了触摸屏外,孩子还可以通过简单的头部运动来控制轮椅。由于基于头部姿势的控制需要可靠的面部检测和头部姿势识别,我们需要一种可以毫不费力地为个人用户量身定制的强大技术。本文提出了一种快速可靠的多线性分类算法。它可以在几秒钟内训练,因此可以很容易地根据残疾儿童的家庭环境进行定制。随后的头部姿势识别使用支持向量机完成。实验结果表明,这种基于头部姿态的轮椅机器人控制方法具有快速、鲁棒性好等优点
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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