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首页> 外文期刊>IEEE transactions on biomedical circuits and systems >Recognizing Hand Gestures With Pressure-Sensor-Based Motion Sensing
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Recognizing Hand Gestures With Pressure-Sensor-Based Motion Sensing

机译:用基于压力传感器的运动感测识别手势

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摘要

This paper proposes a novel framework to process pressure signals for real-time and robust gesture recognition, which includes an innovative segmentation scheme, a gesture recognition scheme and a pressure-parameter adaptive updating strategy. A prototype system, including a wearable gesture sensing device with four pressure sensors and the corresponding algorithmic framework, is developed to realize real-time gesture-based interaction. With the device worn on the wrist, the user can interact with the computer using 8 predefined gestures. Experimental results show that the delay of gesture recognition is about 100 ms, with the average accuracy of 95.28 in the experienced-user test and 86.20 in the inexperienced-user test. Finally, the system is evaluated by a mouse-controlling interaction task and performs well. Both experienced and inexperienced people can easily and quickly complete interactive tasks. These results demonstrate that a pressure-sensor based wristband can be used to classify hand gestures well and to control the mouse interaction. This approach provides an interactive way to replace the mouse for decreasing the risk of the carpal tunnel syndrome (CTS).
机译:本文提出了一种新颖的框架来处理用于实时和鲁棒手势识别的压力信号,包括创新的分割方案,手势识别方案和压力参数自适应更新策略。开发了一种原型系统,包括具有四个压力传感器的可穿戴手势传感装置和相应的算法框架,以实现基于手势的实时手势的交互。使用手腕上佩戴的设备,用户可以使用8个预定义手势与计算机交互。实验结果表明,手势识别的延迟约为100毫秒,在经验丰富的用户测试中,95.28的平均精度和86.20在未经经验的用户测试中。最后,系统由鼠标控制交互任务评估并执行良好。经验丰富,缺乏经验的人可以轻松快速地完成互动任务。这些结果表明,基于压力传感器的腕带可用于良好地对手手势进行分类并控制鼠标交互。该方法提供了更换鼠标以降低腕管综合征(CTS)的风险的交互方式。

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