New Ecg Signal Compression Model Based on Set Theory Applied to Images

Ivan Basile Kabiena, Eric Michel Deussom Djomadji, E. Tonyé
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引用次数: 0

Abstract

Cardiovascular diseases are the origin of many causes of death worldwide. They impose on practitioners optimal diagnostic methods such as telemedicine in order to be able to quickly detect anomalies for daily care and monitoring of patients. The Electrocardiogram (ECG) is an examination that can detect abnormal functioning of the heart and generates a large number of digital data which can be stored or transmitted for further analysis. For storage or transmission purposes, one of the challenges is to reduce the space occupied by ECG signal and for that, it is important to offer more and more efficient algorithms capable of achieving high compression rates, while offering a good quality of reconstruction in a relatively short time. We propose in this paper a new ECG compression scheme that is based on a subset of signal splitting and 2D processing, the wavelet transform (DWT) and SPIHT coding which has proved their worth in the field of signal processing and compression. They are exploited for decorrelation and coding of the signal. The re-sults obtained are significant and offer many perspectives.
基于集理论的心电信号图像压缩新模型
心血管疾病是全世界许多死亡原因的根源。他们要求从业人员采用远程医疗等最佳诊断方法,以便能够快速发现日常护理和监测患者的异常情况。心电图(Electrocardiogram, ECG)是一种检测心脏异常功能并产生大量数字数据的检查方法,这些数据可以存储或传输以供进一步分析。对于存储或传输目的,其中一个挑战是减少心电信号占用的空间,为此,提供越来越多的有效算法,能够实现高压缩率,同时在相对较短的时间内提供良好的重建质量。本文提出了一种新的心电信号压缩方案,该方案是基于信号分割和二维处理的子集、小波变换(DWT)和SPIHT编码,并在信号处理和压缩领域得到了验证。它们被用于信号的去相关和编码。所得结果具有重要意义,并提供了许多观点。
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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