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Gesture recognition using Markov Systems and wearable wireless inertial sensors

机译:使用Markov系统和可穿戴无线惯性传感器进行手势识别

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摘要

Wearable wireless devices and ubiquitous computing are expected to grow significantly in the coming years. Standard inputs such as a mouse and keyboard are not well suited for such mobile systems and gestures are seen as an effective alternative to these classic input styles. This paper examines gesture recognition algorithms that use an inertial sensor worn on the forearm. The recognition algorithms use the sensor's quaternion orientation in either a Hidden Markov Model or Markov Chain based approach. A set of six gestures were selected to fit within the context of an active video game. Despite the fact that the Hidden Markov Model is one of the most commonly used methods for gesture recognition, the experiments showed that the Markov Chain based algorithms outperformed the Hidden Markov Model. The Markov Chain algorithm obtained an average accuracy of 95%, while also having a much faster computation time, making it better suited for real time applications.
机译:预计在未来几年中,可穿戴无线设备和无处不在的计算将显着增长。诸如鼠标和键盘之类的标准输入不适用于此类移动系统,并且手势被视为这些经典输入样式的有效替代。本文研究了使用戴在前臂上的惯性传感器的手势识别算法。识别算法在基于隐马尔可夫模型或基于马尔可夫链的方法中使用传感器的四元数方向。选择了一组六个手势以适合活动视频游戏的环境。尽管隐马尔可夫模型是最常用的手势识别方法之一,但实验表明基于马尔可夫链的算法优于隐马尔可夫模型。马尔可夫链算法具有95%的平均准确度,同时具有更快的计算时间,使其更适合于实时应用。

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