机器人控制中语音和肌电数据的多模态融合

Tauheed Khan Mohd, Jackson Carvalho, A. Javaid
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引用次数: 3

摘要

可穿戴电子设备在不断发展,并增加了人类与技术的融合。这些灵活可弯曲的设备有多种形式,可以感知并测量人体的生理和肌肉变化,并可以使用这些信号来控制机器。MYO手势带就是这样一种设备,它利用肌电信号捕获肌电数据(EMG),并通过一些预定义的手势将其转换为输入信号。在多模式环境中使用该设备不仅可以增加使用该设备可以完成的工作类型,而且还有助于提高所执行任务的准确性。本文讨论了通过麦克风和MYO波段分别捕获的语音和肌电信号等输入模式的融合,以控制机械臂。并给出了实验结果及其性能分析的准确性。
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Multi-modal data fusion of Voice and EMG data for robotic control
Wearable electronic equipment is constantly evolving and is increasing the integration of humans with technology. Available in various forms, these flexible and bendable devices sense and can measure the physiological and muscular changes in the human body and may use those signals to machine control. The MYO gesture band, one such device, captures Electromyography data (EMG) using myoelectric signals and translates them to be used as input signals through some predefined gestures. Use of this device in a multi-modal environment will not only increase the possible types of work that can be accomplished with the help of such device, but it will also help in improving the accuracy of the tasks performed. This paper addresses the fusion of input modalities such as speech and myoelectric signals captured through a microphone and MYO band, respectively, to control a robotic arm. Experimental results obtained as well as their accuracies for performance analysis are also presented.
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