Design and Implementation of Pre-processing Chip for Brain Computer Interface Machine

Mahamudul Hassan, Sheikh Rabiul Islam
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引用次数: 1

Abstract

Many researchers have work on the preprocessing of biomedical signal. Main objectives of these algorithms are to minimize noise and artifacts existing with these signals, so that it will be easy to analyze and diagnosis human diseases. This paper is presented a proposed digital filter design using sampling rate conversion (SRC) system for biomedical signal processing with Field Programmable Gate Array (FPGA). This proposed digital filter has advantages on simple structure, stationary response and adaptively with embedded microprocessors. Another important advantage to FPGA to digital filter implementation include higher sampling rate as compared to traditional DSP chips. The proposed system is tested on computer programmable on Xilinx ISE Suite 14.7 or Quartus II software with interface ALTRA Cyclone DE II board of FPGA device. FPGA technique is flexible and provide better performance as compared to traditional techniques. To testify this chip, we use Brian computer Interface (BCI) machine data like Electroencephalography (EEG).
脑机接口机预处理芯片的设计与实现
许多研究者对生物医学信号的预处理进行了研究。这些算法的主要目标是最小化这些信号中存在的噪声和伪影,以便于分析和诊断人类疾病。本文提出了一种基于采样率转换(SRC)系统的数字滤波器设计方案,用于现场可编程门阵列(FPGA)的生物医学信号处理。该数字滤波器具有结构简单、响应平稳、可嵌入微处理器自适应等优点。与传统的DSP芯片相比,FPGA实现数字滤波器的另一个重要优势包括更高的采样率。该系统在Xilinx ISE Suite 14.7或Quartus II软件上可编程的计算机上进行了测试,并采用FPGA器件的ALTRA Cyclone DE II板接口。与传统技术相比,FPGA技术具有灵活性和更好的性能。为了验证这个芯片,我们使用脑机接口(BCI)的机器数据,如脑电图(EEG)。
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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