Electrocardiogram Compression using Optimized TQWT and Dead-Zone Quantizer

H. Pal, Adarsh Kumar, A. Vishwakarma
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引用次数: 2

Abstract

In the biomedical field, electrocardiogram (ECG) recording produces a large amount of data, which are stored in a digitized format for monitoring and diagnosis purposes. In this regard, it is essential to reduce data size due to memory constraints in ambulatory and tel-e-medicine systems. This paper proposes an algorithm using optimized tunable-Q wavelet transform (TQWT) to reduce the memory requirement. It has the flexibility to tune its parameters to obtain the desired compression. For optimizing the parameters of TQWT, nature-inspired algorithm ant colony optimization (ACO) is used. The compression is achieved by using a dead-zone quantizer (DZQ) and run-length encoding (RLE). Results illustrate that significant compression has been achieved at the cost of acceptable distortion in the signal quality. The performance of the proposed technique is evaluated using percentage-root-mean square difference (PRD), compression ratio (CR), and quality score (QS). The average value obtained of CR, PRD, and QS are given as 22.42, 4.52%, and 6.05, respectively.
利用优化的TQWT和死区量化器进行心电图压缩
在生物医学领域,心电图(ECG)记录产生大量数据,这些数据以数字化格式存储,用于监测和诊断。在这方面,由于门诊和远程电子医疗系统的内存限制,减少数据大小至关重要。本文提出了一种利用优化可调q小波变换(TQWT)来降低存储需求的算法。它可以灵活地调整参数以获得所需的压缩。对于TQWT的参数优化,采用了自然启发算法蚁群优化(ACO)。压缩是通过使用死区量化器(DZQ)和运行长度编码(RLE)来实现的。结果表明,以信号质量可接受的失真为代价,实现了显著的压缩。采用百分比-均方根差(PRD)、压缩比(CR)和质量评分(QS)来评估所提出技术的性能。所得CR、PRD和QS的平均值分别为22.42、4.52%和6.05。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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