Hand gesture recognition for Human-Robot Interaction for service robot

R. Luo, Yen-Chang Wu
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引用次数: 26

Abstract

With advances in technology, robots play an important role in our lives. Nowadays, we have more chance to see robots service in our society such as intelligent robot for rescue and for service. Therefore, Human-Robot interaction becomes an essential issue for research. In this paper we introduce a combining method for hand sign recognition. Hand sign recognition is an essential way for Human-Robot Interaction (HRI). Sign language is the most intuitive and direct way to communication for impaired or disabled people. Through the hand or body gestures, the disabled can easily let caregiver or robot know what message they want to convey. In this paper, we propose a combining hands gesture recognition algorithm which combines two distinct recognizers. These two recognizers collectively determine the hand's sign via a process called CAR equation. These two recognizers are aimed to complement the ability of discrimination. To achieve this goal, one recognizer recognizes hand gesture by hand skeleton recognizer (HSR), and the other recognizer is based on support vector machines (SVM). In addition, the corresponding classifiers of SVM are trained using different features like local binary pattern (LBP) and raw data. Furthermore, the trained images are using Bosphorus Hand Database and in addition to taking by us. A set of rules including recognizer switching and combinatorial approach recognizer CAR equation is devised to synthesize the distinctive methods. We have successfully demonstrated gesture recognition experimentally with successful proof of concept.
面向服务机器人的人机交互手势识别
随着科技的进步,机器人在我们的生活中扮演着重要的角色。如今,我们有更多的机会看到机器人服务于我们的社会,如智能机器人救援和服务。因此,人机交互成为一个重要的研究课题。本文介绍了一种组合方法用于手势语识别。手势识别是实现人机交互的重要手段之一。手语是残疾人士最直观、最直接的交流方式。通过手或身体的手势,残疾人可以很容易地让护理人员或机器人知道他们想要传达什么信息。本文提出了一种结合两种不同识别器的组合手势识别算法。这两个识别器通过一个叫做CAR方程的过程共同确定手的手势。这两个识别器的目的是补充辨别能力。为了实现这一目标,一个识别器通过手骨架识别器(HSR)识别手势,另一个识别器基于支持向量机(SVM)识别手势。此外,利用局部二值模式(local binary pattern, LBP)和原始数据等不同特征训练支持向量机的分类器。此外,训练后的图像除由我们拍摄外,还使用博斯普鲁斯手数据库。设计了一套包括识别器切换和组合方法识别器CAR方程的规则来综合不同的方法。我们已经成功地通过实验证明了手势识别的概念。
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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