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首页> 外文期刊>International journal of telemedicine and applications >A high-performance lossless compression scheme for EEG signals using wavelet transform and neural network predictors.
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A high-performance lossless compression scheme for EEG signals using wavelet transform and neural network predictors.

机译:使用小波变换和神经网络预测器的EEG信号高性能无损压缩方案。

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摘要

Developments of new classes of efficient compression algorithms, software systems, and hardware for data intensive applications in today's digital health care systems provide timely and meaningful solutions in response to exponentially growing patient information data complexity and associated analysis requirements. Of the different 1D medical signals, electroencephalography (EEG) data is of great importance to the neurologist for detecting brain-related disorders. The volume of digitized EEG data generated and preserved for future reference exceeds the capacity of recent developments in digital storage and communication media and hence there is a need for an efficient compression system. This paper presents a new and efficient high performance lossless EEG compression using wavelet transform and neural network predictors. The coefficients generated from the EEG signal by integer wavelet transform are used to train the neural network predictors. The error residues are further encoded using a combinational entropy encoder, Lempel-Ziv-arithmetic encoder. Also a new context-based error modeling is also investigated to improve the compression efficiency. A compression ratio of 2.99 (with compression efficiency of 67%) is achieved with the proposed scheme with less encoding time thereby providing diagnostic reliability for lossless transmission as well as recovery of EEG signals for telemedicine applications.
机译:在当今的数字医疗系统中,针对数据密集型应用的新型高效压缩算法,软件系统和硬件的开发提供了及时而有意义的解决方案,以应对指数级增长的患者信息数据复杂性和相关分析要求。在不同的一维医学信号中,脑电图(EEG)数据对于神经科医生对检测与脑相关的疾病非常重要。生成和保存以供将来参考的数字化EEG数据量超过了数字存储和通信介质中最新发展的能力,因此需要一种有效的压缩系统。本文提出了一种使用小波变换和神经网络预测器的新型高效高性能无损EEG压缩方法。通过整数小波变换从脑电信号生成的系数用于训练神经网络预测器。使用组合熵编码器Lempel-Ziv-算术编码器进一步对误差残差进行编码。还研究了新的基于上下文的错误建模,以提高压缩效率。所提出的方案以较少的编码时间实现了2.99的压缩率(压缩效率为67%),从而为无损传输以及为远程医疗应用恢复EEG信号提供了诊断可靠性。

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