便携式心电数据压缩与重构方法综述与改进

Diptee C. Pandhe, H. T. Patil
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引用次数: 4

摘要

心电信号数据的存储和传输需求不断增加。由于存储容量和传输带宽的限制,需要对心电信号进行压缩。本文综述了现有的心电压缩方法,并提出了改进方法,以简化便携式心电记录仪的心电压缩。便携式设备或嵌入式系统的计算/处理能力有限。改进的目的是降低算法的复杂度,使其与嵌入式系统兼容。基于压缩比(CR)、归一化标准差(PRDN)百分比和质量分数(QS)等不同的压缩和质量参数对所提出的方法进行了评价。PRDN是一个重要的参数,因为它表示引入的错误。压缩算法包括三个顺序处理阶段:1.压缩算法;预处理与分类;线性变换,3。熵编码。采用0.5、1、2、4等不同量化因子分析心电压缩方法。解压缩技术是压缩的逆过程,它可以在不损失信息的情况下重建原始信号。最后,将该方法与现有心电压缩算法进行了比较。
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Review and enhancement of ECG data compression and reconstruction method for portable devices
The need to store and transmit ECG signal data is continuously increasing. Due to limited storage capacity and limited transmission bandwidth, there is a need to compress ECG signal. This paper involves review of existing ECG compression methods and enhancements are proposed to simplify them for portable ECG recorder. The portable devices or embedded systems have limited computing/processing power. The enhancements are suggested to reduce complexity of the algorithms to make them compatible for embedded systems. The proposed method is evaluated on the basis of different compression and quality parameters like compression ratio (CR), percent root mean square difference normalized (PRDN) and quality score (QS). The PRDN is an important parameter as it indicates the error introduced. The compression algorithm includes three sequential processing phases: 1. Pre-processing and classification, 2. Linear transformation, 3. Entropy coding. The ECG compression method is analyzed with different quantization factors like 0.5, 1, 2 and 4. The de-compression technique is the inverse process of compression and it reconstructs the original signal with negligible loss of information. Finally, the described method is compared with existing ECG compression algorithms.
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