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Wavelet-based ECG compression using dynamic vector quantization with tree codevectors in single codebook

机译:在单个码本中使用带有树码矢量的动态矢量量化进行基于小波的ECG压缩

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摘要

In this paper, we propose a novel vector quantizer (VQ) in the wavelet domain for the compression of electrocardiogram (ECG) signals. A vector called tree vector (TV) is formed first in a novel structure, where wavelet transformed (WT) coefficients in the vector are arranged in the order of a hierarchical tree. Then, the TVs extracted from various WT subbands are collected in one single codebook. This feature is an advantage over traditional WT-VQ methods, where multiple codebooks are needed and are usually designed separately because numerical ranges of coefficient values in various WT subbands are quite different. Finally, a distortion-constrained codebook replenishment mechanism is incorporated into the VQ, where codevectors can be updated dynamically, to guarantee reliable quality of reconstructed ECG waveforms. With the proposed approach both visual quality and the objective quality in terms of the percent of root-mean-square difference (PRD) are excellent even in a very low bit rate. For the entire 48 records of Lead II ECG data in the MIT/BIH database, an average PRD of 7.3% at 146 b/s is obtained. For the same test data under consideration, the proposed method outperforms many recently published ones, including the best one known as the set partitioning in hierarchical trees.
机译:在本文中,我们提出了一种在小波域中用于压缩心电图(ECG)信号的新型矢量量化器(VQ)。首先以新颖的结构形成称为树向量(TV)的向量,其中向量中的小波变换(WT)系数按分层树的顺序排列。然后,将从各种WT子带中提取的电视收集在一个单一的密码本中。与传统的WT-VQ方法相比,此功能是一个优势,在传统的WT-VQ方法中,需要多个码本,并且通常会分别设计,因为各个WT子带中系数值的数值范围完全不同。最后,失真约束码本补充机制被整合到VQ中,可以动态更新码矢量,以保证重构ECG波形的可靠质量。使用提出的方法,即使在非常低的比特率下,视觉质量和客观质量(均方根差(PRD)百分比)也非常好。对于MIT / BIH数据库中Lead II ECG数据的全部48条记录,在146 b / s时获得的平均PRD为7.3%。对于考虑中的相同测试数据,建议的方法要优于许多最近发布的方法,包括最好的方法(称为分层树中的集合划分)。

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