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首页> 外文期刊>Biomedical signal processing and control >ECG Compression Using The Context Modeling Arithmetic Coding With Dynamic Learning Vector-scalar Quantization
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ECG Compression Using The Context Modeling Arithmetic Coding With Dynamic Learning Vector-scalar Quantization

机译:使用动态学习矢量标量量化的上下文建模算术编码进行ECG压缩

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Electrocardiogram (ECG) compression can significantly reduce the storage and transmission burden for the long-term recording system and telemedicine applications. In this paper, an improved wavelet-based compression method is proposed. A discrete wavelet transform (DWT) is firstly applied to the mean removed ECG signal. DWT coefficients in a hierarchical tree order are taken as the component of a vector named tree vector (TV). Then, the TV is quantized with a vector-scalar quantizer (VSQ), which is composed of a dynamic learning vector quantizer and a uniform scalar dead-zone quantizer. The context modeling arithmetic coding is finally employed to encode those quantized coefficients from the VSQ. All tested records are selected from the Massachusetts Institute of Technology-Beth Israel Hospital arrhythmia database. Statistical results show that the compression performance of the proposed method outperforms several published compression algorithms.
机译:心电图(ECG)压缩可以大大减少长期记录系统和远程医疗应用程序的存储和传输负担。本文提出了一种改进的基于小波的压缩方法。首先将离散小波变换(DWT)应用于平均去除后的ECG信号。分层树顺序中的DWT系数被视为名为树向量(TV)的向量的组成部分。然后,电视由矢量标量量化器(VSQ)量化,该矢量标量量化器由动态学习矢量量化器和统一标量死区量化器组成。最后采用上下文建模算术编码对来自VSQ的那些量化系数进行编码。所有测试记录均选自麻省理工学院-贝斯以色列医院心律失常数据库。统计结果表明,该方法的压缩性能优于几种已公开的压缩算法。

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