Automatic gesture recognition for intelligent human-robot interaction

Seong-Whan Lee
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引用次数: 76

Abstract

An intelligent robot requires natural interaction with humans. Visual interpretation of gestures can be useful in accomplishing natural human-robot interaction (HRl). Previous HRI researches were focused on issues such as hand gesture, sign language, and command gesture recognition. However, automatic recognition of whole body gestures is required in order to operate HRI naturally. This can be a challenging problem because describing and modeling meaningful gesture patterns from whole body gestures are complex tasks. This paper presents a new method for spotting and recognizing whole body key gestures at the same time on a mobile robot. Our method is simultaneously used with other HRI approaches such as speech recognition, face recognition, and so forth. In this regard, both of execution speed and recognition performance should be considered. For efficient and natural operation, we used several approaches at each step of gesture recognition; learning and extraction of articulated joint information, representing gesture as a sequence of clusters, spotting and recognizing a gesture with HMM. In addition, we constructed a large gesture database, with which we verified our method. As a result, our method is successfully included and operated in a mobile robot
用于智能人机交互的自动手势识别
智能机器人需要与人类自然互动。手势的视觉解释在完成自然人机交互(HRl)中是有用的。以往的HRI研究主要集中在手势、手语和命令手势识别等问题上。然而,为了自然地操作HRI,需要对全身手势进行自动识别。这可能是一个具有挑战性的问题,因为从全身手势描述和建模有意义的手势模式是一项复杂的任务。提出了一种同时识别移动机器人全身按键手势的新方法。我们的方法与其他HRI方法(如语音识别、人脸识别等)同时使用。在这方面,需要同时考虑执行速度和识别性能。为了高效、自然地进行操作,我们在手势识别的每一步都使用了几种方法;学习和提取关节信息,用聚类序列表示手势,用HMM识别手势。此外,我们构建了一个大型手势数据库,并用该数据库验证了我们的方法。结果表明,该方法已成功地应用于移动机器人中
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