Artificial hand control by myoelectric signals — reduced DFT approach

P. Szecówka, A. Spyra, Jadwiga Pcdzinska-Rzany, A. Wolczowski
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引用次数: 1

Abstract

Smart hand prosthesis control, based on myoelectric signals, strongly depends on signal processing algorithms. This kind of application field forces specific requirements on computational complexity (for dexterity of prosthesis), processing speed (for fast reaction) and size (for portability). The paper presents a concept of reduction of DFT information extracted from EMG signals. Signals are acquisited from 8 channels with 1 kHz sampling frequency. Specialized digital hardware is proposed, capable of parallel processing of series of signals. The design was implemented in VHDL, verified and synthesized for FPGA. In-house developed floating point arithmetic was applied. Satisfying processing speed was obtained for implementation technique that enable embedding in prosthesis.
基于肌电信号的人工手部控制-简化DFT方法
基于肌电信号的智能假肢控制在很大程度上依赖于信号处理算法。这种应用领域对计算复杂性(为了假肢的灵活性)、处理速度(为了快速反应)和尺寸(为了便携性)提出了特定的要求。本文提出了对肌电信号中提取的DFT信息进行约简的概念。信号采集自8个通道,采样频率为1khz。提出了能够并行处理系列信号的专用数字硬件。该设计在VHDL语言中实现,并在FPGA上进行了验证和综合。应用了内部开发的浮点算法。获得了令人满意的处理速度,实现了假体内嵌入。
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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