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首页> 外文期刊>Recent advances in electrical & electronic engineering >Electrooculogram (EOG) Signal Classification Using Moving Average Technique and its Application to Drive Direct Current Motors
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Electrooculogram (EOG) Signal Classification Using Moving Average Technique and its Application to Drive Direct Current Motors

机译:使用移动平均技术及其应用驱动直流电动机的电帘图(EOG)信号分类

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摘要

Background: Electrooculogram (EOG) signal is one of the bioelectric signals acquired from the human body to study the movements of eyes and also to design and develop assistive devices. These devices can be mobility devices, video gaming devices or any other assistive device. Methods: Assistive devices are especially designed for quadriplegic or spinal cord injured patients. Motors are one of the key components in the design of mobility devices. These motors are to be driven with the help of EOG commands. This paper explains the process of eliminating involuntary eye movements while driving the motors under the control of EOG signals. The system design is carried out in two ways. Initially the system is designed in such a way that the motors are driven even for involuntary eye movements which is a major drawback of the system. Conclusion: This drawback has been overcome successfully by introducing the moving average technique during classification of the EOG signals. The systems overall classification accuracy is also computed by constructing confusion matrix and has produced high sensitivity, specificity with overall average accuracy of 90.91%.
机译:背景:电源图(EOG)信号是从人体获取的生物电信号之一,以研究眼睛的运动以及设计和开发辅助装置。这些设备可以是移动设备,视频游戏设备或任何其他辅助设备。方法:辅助装置专为四元或脊髓损伤患者设计。电机是移动设备设计中的关键组件之一。这些电机应在EOG命令的帮助下驱动。本文介绍了在EOG信号控制下驱动电机时消除无意识的眼球运动的过程。系统设计以两种方式进行。最初,该系统的设计成使得电动机即使是用于系统的主要缺点的非自愿眼球运动。结论:通过在EOG信号分类期间引入移动平均技术,已成功克服了该缺点。系统整体分类精度也通过构建混淆矩阵来计算,并且具有高灵敏度,特异性平均精度为90.91%。

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