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A Hand Gesture Recognition Framework and Wearable Gesture-Based Interaction Prototype for Mobile Devices

机译:用于移动设备的手势识别框架和基于可穿戴手势的交互原型

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摘要

An algorithmic framework is proposed to process acceleration and surface electromyographic (SEMG) signals for gesture recognition. It includes a novel segmentation scheme, a score-based sensor fusion scheme, and two new features. A Bayes linear classifier and an improved dynamic time-warping algorithm are utilized in the framework. In addition, a prototype system, including a wearable gesture sensing device (embedded with a three-axis accelerometer and four SEMG sensors) and an application program with the proposed algorithmic framework for a mobile phone, is developed to realize gesture-based real-time interaction. With the device worn on the forearm, the user is able to manipulate a mobile phone using 19 predefined gestures or even personalized ones. Results suggest that the developed prototype responded to each gesture instruction within 300 ms on the mobile phone, with the average accuracy of 95.0% in user-dependent testing and 89.6% in user-independent testing. Such performance during the interaction testing, along with positive user experience questionnaire feedback, demonstrates the utility of the framework.
机译:提出了一种算法框架来处理用于手势识别的加速度和表面肌电图(SEMG)信号。它包括一个新颖的分割方案,一个基于分数的传感器融合方案以及两个新功能。该框架利用了贝叶斯线性分类器和改进的动态时间扭曲算法。此外,还开发了原型系统,包括可穿戴手势感测设备(嵌入了三轴加速度计和四个SEMG传感器)和带有所提出的用于手机的算法框架的应用程序,以实现基于手势的实时相互作用。通过将设备戴在前臂上,用户可以使用19个预定义手势甚至个性化手势来操作手机。结果表明,开发的原型在手​​机上的300毫秒内响应了每个手势指令,在用户相关测试中的平均准确度为95.0%,在用户独立测试中的平均准确度为89.6%。交互测试期间的这种性能,以及积极的用户体验问卷反馈,证明了该框架的实用性。

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