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首页> 外文期刊>IEICE transactions on information and systems >A Recognition Method for One-Stroke Finger Gestures Using a MEMS 3D Accelerometer
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A Recognition Method for One-Stroke Finger Gestures Using a MEMS 3D Accelerometer

机译:使用MEMS 3D加速度计的单指手势识别方法

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摘要

Automatic recognition of finger gestures can be used for promotion of life quality. For example, a senior citizen can control the home appliance, call for help in emergency, or even communicate with others through simple finger gestures. Here, we focus on one-stroke finger gesture, which are intuitive to be remembered and performed. In this paper, we proposed and evaluated an accelerometer-based method for detecting the predefined one-stroke finger gestures from the data collected using a MEMS 3D accelerometer worn on the index finger. As alternative to the optoelectronic, sonic and ultrasonic approaches, the accelerometer-based method is featured as self-contained, cost-effective, and can be used in noisy or private space. A compact wireless sensing mote integrated with the accelerometer, called MagicRing, is developed to be worn on the finger for real data collection. A general definition on one-stroke gesture is given out, and 12 kinds of one-stroke finger gestures are selected from human daily activities. A set of features is extracted among the candidate feature set including both traditional features like standard deviation, energy, entropy, and frequency of acceleration and a new type of feature called relative feature. Both subject-independent and subject-dependent experiment methods were evaluated on three kinds of representative classifiers. In the subject-independent experiment among 20 subjects, the decision tree classifier shows the best performance recognizing the finger gestures with an average accuracy rate for 86.92%. In the subject-dependent experiment, the nearest neighbor classifier got the highest accuracy rate for 97.55%.
机译:手指手势的自动识别可用于提高生活质量。例如,老年人可以控制家用电器,在紧急情况下求助,甚至可以通过简单的手指手势与他人进行通信。在这里,我们将重点放在一键手指手势上,这种手势很容易记住和执行。在本文中,我们提出并评估了一种基于加速度计的方法,该方法用于从使用戴在食指上的MEMS 3D加速度计收集到的数据中检测预定义的单冲程手指手势。作为光电子,声波和超声方法的替代方法,基于加速度计的方法具有独立性,成本效益高的特点,可在嘈杂或私人空间中使用。开发了一种与加速度计集成在一起的紧凑型无线传感微粒,称为MagicRing,可以戴在手指上进行实际数据收集。给出了单冲程手势的一般定义,并从人类的日常活动中选择了12种单冲程手指手势。从候选特征集中提取了一组特征,包括标准偏差,能量,熵和加速度频率等传统特征,以及称为相对特征的新型特征。在三种有代表性的分类器上评估了独立于受试者和独立于受试者的实验方法。在20名受试者的与受试者无关的实验中,决策树分类器以86.92%的平均准确率显示了识别手指手势的最佳性能。在与受试者相关的实验中,最近邻分类器的准确率最高,为97.55%。

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