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一种使用一维离散小波变换的二维心电图信号压缩算法。

A 2D electrocardiogram signal compression algorithm using 1D discrete wavelet transform.

作者信息

Pal Hardev Singh, Kumar A, Vishwakarma Amit, Singh Girish Kumar

机构信息

Department of ECE, PDPM-Indian Institute of Information Technology Design and Manufacturing Jabalpur, Jabalpur, 482005, Madhya Pradesh, India.

Centre for Artificial Intelligence, Madhav Institute of Technology & Science, Deemed University, Gwalior, 474005, India.

出版信息

Phys Eng Sci Med. 2025 May 13. doi: 10.1007/s13246-025-01556-8.

Abstract

Electrocardiogram (ECG) signals are frequently acquired nowadays to detect various heart diseases. Nowadays, IoT-enabled wearable devices are in demand for distant or telemedicine-based healthcare applications. However, the acquisition process of ECG signals generates a huge amount of data, which negatively impacts the storage and transmission efficiency of these devices. As a result, an efficient compression algorithm is needed for effective ECG data management. Therefore, a compression algorithm for 2D ECG signals is proposed that employs the 1D Cohen-Daubechies-Feauveau 9/7 wavelet transform on 2D ECG signals. The proposed method effectively improves compression performance by increasing sparsity among the transform coefficients. Following that, obtained coefficients are quantized, and significant ones are retained using the target-based reconstruction error. The adaptive Huffman encoding is used to further enhance the compression once the quantized coefficients have been encoded. The experimental work is tested on MIT-BIH arrhythmia database, and the effect of different anomalies on compression performance is also assessed. The compression efficacy is evaluated in comparison to existing compression methods, and other wavelet transforms such as sym2, sym4, haar, db5, coif4, and beta wavelets. The proposed algorithm's performance is assessed in terms of quality score, percent root-mean-square difference, signal-to-noise ratio, and compression ratio. These factors were averaged out to get values of 30.23, 5.07, 26.78 dB, and 7.21, respectively. Results are evident that the proposed method can significantly improve storage efficiency and may also improve bandwidth utilization during real-time data transfer.

摘要

如今,人们经常采集心电图(ECG)信号以检测各种心脏疾病。如今,基于物联网的可穿戴设备在远程或基于远程医疗的医疗保健应用中很受欢迎。然而,ECG信号的采集过程会产生大量数据,这对这些设备的存储和传输效率产生负面影响。因此,需要一种高效的压缩算法来进行有效的ECG数据管理。为此,提出了一种针对二维ECG信号的压缩算法,该算法对二维ECG信号采用一维Cohen-Daubechies-Feauveau 9/7小波变换。该方法通过增加变换系数之间的稀疏性有效地提高了压缩性能。随后,对得到的系数进行量化,并使用基于目标的重构误差保留重要系数。一旦对量化系数进行了编码,就使用自适应哈夫曼编码进一步提高压缩率。在麻省理工学院-贝斯以色列女执事医疗中心心律失常数据库上对实验工作进行了测试,并评估了不同异常对压缩性能的影响。与现有的压缩方法以及其他小波变换(如sym2、sym4、haar、db5、coif4和β小波)相比,评估了压缩效果。从质量分数、均方根误差百分比、信噪比和压缩率等方面评估了所提出算法的性能。这些因素的平均值分别为30.23、5.07、26.78 dB和7.21。结果表明,该方法可以显著提高存储效率,并且在实时数据传输过程中也可能提高带宽利用率。

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