应用小波去噪提高脑电信号的生物医学分析质量

S. Patil, M. Pawar
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引用次数: 26

摘要

数百年来,人们对人体的兴趣从未减少,对人体的研究从未停止过。脑电图分析脑的组成和生物医学应用的认知过程的研究是正在进行的研究课题。为了正确诊断许多神经系统疾病,如癫痫、肿瘤、与创伤有关的问题,准确分析脑电图信号是必不可少的。此外,为了提高脑机接口(BCI)系统的有效性,需要确定提高观察到的脑电信号信噪比(SNR)的方法。在头皮上放置电极测得的脑电图通常具有非常小的微伏振幅,因此脑电图数据的分析和信息提取是一个难题。由于引入了诸如电网的线路噪声、眨眼、眼球运动、心跳、呼吸和其他肌肉活动等人为因素,这个问题变得更加复杂。离散小波变换为非平稳脑电信号的去噪提供了有效的解决方案。本文将小波去噪技术应用于脑电信号的处理。首先利用Haar、Daubechies、Symlet、Coiflet、Dmey五种不同类型的小波对数据库中的脑电信号进行分解;在去噪过程中,采用阈值法对受污染的脑电信号进行去噪。我们的目标是找到适合特定任务的最佳小波类型,以获得更好的性能指标,如更大的信噪比(SNR)。来自科罗拉多州立大学的脑电图数据库被用于实验。
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Quality advancement of EEG by wavelet denoising for biomedical analysis
Interests on the human body have never decreased and research on it has never stopped since hundreds years ago. A study of EEG for analysis of composition of the brain and cognitive processes for biomedical applications is ongoing topic for research. For proper diagnosis of many neurological diseases such as epilepsy, tumors, problems associated with trauma accurate analysis of EEG signals is essential. In addition, to enhance the efficacy of Brain Computer Interface (BCI) systems it is required to determine methods of increasing the signal-to-noise ratio (SNR) of the observed EEG signals. EEG measured by placing electrodes on scalp usually has very small amplitude in microvolts, so the analysis of EEG data and the extraction of information from this data is a difficult problem. This problem become more complicated by the introduction of artifacts such as line noise from the power grid, eye blinks, eye movements, heartbeat, breathing, and other muscle activity. Discrete wavelet transform offers an effective solution for denoising nonstationary EEG signals. In this paper, wavelet denoising is applied to EEG acquired during performing different mental tasks. First decomposition of the EEG signal from database using five different types of wavelets viz. Haar, Daubechies, Symlet, Coiflet,Dmey is carried out. In denoising process, the thresholding method used for removing noise from contaminated EEG. Our objective to find best suitable wavelet type to particular task which gave better performance measure such as larger signal-to-Noise Ratio (SNR). The EEG database from the Colorado state university is used for experimentation.
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