sEMG based human computer interface for robotic wheel

Md. Shafivulla, Vullanki Rajesh, Habibulla Khan
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引用次数: 3

Abstract

In this paper, a real-time experimental of Hand Gesture sEMG signal using artificial neural networks for Wheel Vehicle Control is proposed. The raw SEMG signals been captured from SEMG amplifier, up to 8 channels of NI-DAQ card responses data will be combined and a fine tuning step by using pattern classification. The database then been build and use for real-time experimental control classification. Captured data will send through serial port and Wheel Machine will receive and move accordingly. The detail of the experiment and simulation conducted described here to verify the differentiation and effectiveness of combined channels sEMG pattern classification of hand gesture for real-time control.
基于表面肌电信号的机器人车轮人机界面
本文提出了一种基于人工神经网络的轮式车辆手势肌电信号实时控制实验。从表面肌电信号放大器捕获的原始表面肌电信号,将多达8通道的NI-DAQ卡响应数据进行组合,并通过模式分类进行微调。建立数据库并用于实时实验控制分类。捕获的数据将通过串口发送,车轮机将接收并相应移动。本文所进行的实验和仿真的详细内容是为了验证手势复合通道表面肌电信号模式分类用于实时控制的差异性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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