Simultaneous segmentation and recognition of hand gestures for human-robot interaction

Harold Vasquez Chavarria, H. Escalante, L. Sucar
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引用次数: 4

Abstract

Gestures are a natural form of communication between people that is being increasingly used for human-robot interaction. There are many automatic techniques to recognize gestures, however, most of them assume that gestures are already segmented from continuous video, clearly, this is an unrealistic scenario for human-robot interaction. For instance, when commanding a service robot the agent must be aware at any time of the world (e.g., via continuous video) and ready to react when a user gives an order (e.g., using a gesture). In this paper we propose a method for addressing both tasks, segmentation and recognition of gestures, simultaneously. The proposed method is based on a novel video-stream exploration scheme called multi-size dynamic windows. Several windows of different sizes are dynamically created, each window is classified by a Hidden Markov Model (HMM). Predictions are combined via a voting strategy and eventually the endpoint of a gesture is detected (segmentation). At that moment the method recognizes the gesture that has been just performed using a majority vote decision (recognition). The proposed method is intended to command a service robot by capturing information of user movements with a KinectTM sensor. We evaluated experimentally the proposed method with 5 different gestures suitable for commanding a service robot. Experimental results show that up to 82.76% of the gestures are correctly segmented. The corresponding recognition performance was of 89.58 %. We consider that this performance is acceptable for certain human-robot interaction scenarios.
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人机交互中手势的同时分割与识别
手势是人与人之间交流的一种自然形式,越来越多地用于人机交互。目前有许多自动识别手势的技术,但是,大多数技术都假设手势已经从连续视频中分割出来,显然,这是一个不现实的人机交互场景。例如,当命令服务机器人时,代理必须随时意识到(例如,通过连续的视频),并准备在用户发出命令时做出反应(例如,使用手势)。在本文中,我们提出了一种同时解决手势分割和识别这两个任务的方法。该方法基于一种新的视频流探测方案,称为多尺寸动态窗口。动态创建不同大小的窗口,每个窗口用隐马尔可夫模型进行分类。预测通过投票策略组合,最终检测到手势的端点(分割)。此时,该方法使用多数投票决定(识别)来识别刚刚执行的手势。所提出的方法旨在通过使用KinectTM传感器捕获用户运动信息来指挥服务机器人。我们用5种适合指挥服务机器人的不同手势对所提出的方法进行了实验评估。实验结果表明,该方法对手势的分割正确率高达82.76%。相应的识别率为89.58%。我们认为这种性能对于某些人机交互场景是可以接受的。
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