一种高效的脑电数据混合压缩系统设计

Retaj Yousri, Madyan Alsenwi, M. Saeed Darweesh, T. Ismail
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引用次数: 1

摘要

显示脑电活动的脑电图(EEG)信号是用高采样率获得的。因此,记录的脑电图数据量很大。为了存储和传输这些数据,需要很大的空间和带宽。因此,对脑电图数据进行预处理和压缩是保证数据传输和存储效率的重要手段。该方法的目的是在时间和空间复杂度方面设计一个高效的脑电数据压缩系统。该系统主要由预处理单元、压缩单元和重构单元组成。压缩过程的核心发生在压缩单元中。在压缩过程中尝试了不同的有损/无损混合压缩技术组合。在本研究中,对离散余弦变换和离散小波变换技术进行了有损压缩算法的实验。对无损压缩算法分别进行了算术编码和行距编码实验。最终结果表明,将离散余弦变换和运行长度编码相结合可以获得最优的系统复杂度和压缩比。该方法在RMSE = 0.188时达到CR = 94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Design for An Efficient Hybrid Compression System for EEG Data
The Electroencephalography (EEG) signals that indicate the electrical activity of the brain are acquired with a high sampling rate. Consequently, the size of the recorded EEG data is large. For storing and transmitting these data, large space and bandwidth are demanded. Therefore, preprocessing and compressing EEG data are important for efficient data transmission and storage. The purpose of this approach is to design an efficient EEG data compression system in terms of time and space complexities. The proposed system consists of three main units: preprocessing unit, compression unit, and reconstruction unit. The core of the compression process occurs in the compression unit. Different combinations of hybrid lossy/lossless compression techniques were tried in the compression process. In this study, both the Discrete Cosine Transform and the Discrete Wavelet Transform techniques were experimented for the lossy compression algorithm. The Arithmetic Coding and the Run Length Encoding were experimented then for the lossless compression algorithm. The final results showed that combining both the Discrete Cosine Transform and the Run Length Encoding yields the most optimal system complexity and compression ratio. This approach achieved up to CR = 94% at RMSE = 0.188.
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