Shridhar M, Stevens M F
Int J Biomed Comput. 1979 Mar;10(2):113-28. doi: 10.1016/0020-7101(79)90021-7.
A number of papers on the subject of data reduction techniques applied to ECG Data have recently been published; however, the authors found that most of these articles did not consider quantization techniques, which can be effectively applied to ECG data without any complex parameter extraction procedures. In this paper the authors have looked at the effects of quantization on ECG data and techniques of reducing the amount of data needed to represent these signals. Basically, 3 data reduction techniques, linear prediction using differential pulse code modulation, spectral analysis and slope change detection are investigated and a relative assessment of their performance is presented. This analysis revealed that a slope change detection, as applied to prefiltered data, can be used to represent ECG data at a rate of 2 bits/sample, while maintaining the mean squared error and peak error below 1% and 5% respectively. This technique therefore gives an effective 3 to 1 reduction over the original sampled data, since it was found that the original data could be quantized to 6 bits without significant loss of waveform information.
最近发表了许多关于应用于心电图数据的数据缩减技术的论文;然而,作者发现这些文章大多没有考虑量化技术,而量化技术可以在无需任何复杂参数提取程序的情况下有效地应用于心电图数据。在本文中,作者研究了量化对心电图数据的影响以及减少表示这些信号所需数据量的技术。基本上,研究了三种数据缩减技术,即使用差分脉冲编码调制的线性预测、频谱分析和斜率变化检测,并对它们的性能进行了相对评估。该分析表明,应用于预滤波数据的斜率变化检测可用于以2比特/样本的速率表示心电图数据,同时将均方误差和峰值误差分别保持在1%和5%以下。因此,该技术相对于原始采样数据实现了有效的3比1缩减,因为发现原始数据可以量化为6比特而不会显著损失波形信息。