Probabilistic Detection of Pointing Directions for Human-Robot Interaction

Dadhichi Shukla, Ö. Erkent, J. Piater
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引用次数: 30

Abstract

Deictic gestures - pointing at things in human-human collaborative tasks - constitute a pervasive, non-verbal way of communication, used e.g. to direct attention towards objects of interest. In a human-robot interactive scenario, in order to delegate tasks from a human to a robot, one of the key requirements is to recognize and estimate the pose of the pointing gesture. Standard approaches rely on full-body or partial-body postures to detect the pointing direction. We present a probabilistic, appearance-based object detection framework to detect pointing gestures and robustly estimate the pointing direction. Our method estimates the pointing direction without assuming any human kinematic model. We propose a functional model for pointing which incorporates two types of pointing, finger pointing and tool pointing using an object in hand. We evaluate our method on a new dataset with 9 participants pointing at 10 objects.
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人机交互中指向方向的概率检测
指示手势——在人与人之间的协作任务中指向事物——构成了一种普遍的、非语言的交流方式,例如用于将注意力引向感兴趣的物体。在人机交互场景中,为了将任务从人委派给机器人,关键要求之一是识别和估计指向手势的姿势。标准的方法依靠全身或部分身体的姿势来检测指向的方向。我们提出了一个概率的,基于外观的目标检测框架来检测指向手势和鲁棒估计指向方向。我们的方法在不假设任何人体运动学模型的情况下估计指向。我们提出了一种功能模型,该模型包含两种类型的指向,手指指向和使用手持物体的工具指向。我们在一个新的数据集上评估我们的方法,其中9个参与者指向10个对象。
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