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Lossless Compression Schemes for ECG Signals Using Neural Network Predictors

机译:使用神经网络预测器的ECG信号无损压缩方案

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This paper presents lossless compression schemes for ECG signals based on neural network predictors and entropy encoders. Decorrelation is achieved by nonlinear prediction in the first stage and encoding of the residues is done by using lossless entropy encoders in the second stage. Different types of lossless encoders, such as Huffman, arithmetic, and runlength encoders, are used. The performances of the proposed neural network predictor-based compression schemes are evaluated using standard distortion and compression efficiency measures. Selected records from MIT-BIH arrhythmia database are used for performance evaluation. The proposed compression schemes are compared with linear predictor-based compression schemes and it is shown that about 11% improvement in compression efficiency can be achieved for neural network predictor-based schemes with the same quality and similar setup. They are also compared with other known ECG compression methods and the experimental results show that superior performances in terms of the distortion parameters of the reconstructed signals can be achieved with the proposed schemes.
机译:本文提出了基于神经网络预测器和熵编码器的ECG信号无损压缩方案。在第一阶段通过非线性预测实现解相关,在第二阶段通过使用无损熵编码器对残差进行编码。使用了不同类型的无损编码器,例如霍夫曼编码,算术编码和游程编码器。使用标准失真和压缩效率度量来评估所提出的基于神经网络预测变量的压缩方案的性能。 MIT-BIH心律失常数据库中的选定记录用于性能评估。将所提出的压缩方案与基于线性预测器的压缩方案进行了比较,结果表明,对于具有相同质量和相似设置的基于神经网络预测器的方案,可以将压缩效率提高约11%。它们还与其他已知的ECG压缩方法进行了比较,实验结果表明,利用所提出的方案,可以在重构信号的失真参数方面实现出色的性能。

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