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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Compression of Biomedical Signals With Mother Wavelet Optimization and Best-Basis Wavelet Packet Selection
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Compression of Biomedical Signals With Mother Wavelet Optimization and Best-Basis Wavelet Packet Selection

机译:母小波优化和最优基小波包选择对生物医学信号的压缩

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We propose a novel scheme for signal compression based on the discrete wavelet packet transform (DWPT) decompositon. The mother wavelet and the basis of wavelet packets were optimized and the wavelet coefficients were encoded with a modified version of the embedded zerotree algorithm. This signal dependant compression scheme was designed by a two-step process. The first (internal optimization) was the best basis selection that was performed for a given mother wavelet. For this purpose, three additive cost functions were applied and compared. The second (external optimization) was the selection of the mother wavelet based on the minimal distortion of the decoded signal given a fixed compression ratio. The mother wavelet was parameterized in the multiresolution analysis framework by the scaling filter, which is sufficient to define the entire decomposition in the orthogonal case. The method was tested on two sets of ten electromyographic (EMG) and ten electrocardiographic (ECG) signals that were compressed with compression ratios in the range of 50%-90%. For 90% compression ratio of EMG (ECG) signals, the percent residual difference after compression decreased from (mean ) 48.69.9% (21.58.4%) with discrete wavelet transform (DWT) using the wavelet leading to poorest performance to 28.43.0% (6.71.9%) with DWPT, with optimal basis selection and wavelet optimization. In conclusion, best basis selection and optimization of the mother wavelet through parameterization led to substantial improvement of performance in signal compression with respect to DWT and randon selection of the mother wavelet. The method provides an adaptive approach for optimal signal representation for compression and can thus be applied to any type of biomedical signal.
机译:我们提出了一种基于离散小波包变换(DWPT)分解的信号压缩新方案。优化了子小波和小波包的基础,并使用嵌入式零树算法的改进版本对小波系数进行编码。通过两步过程设计了这种依赖于信号的压缩方案。第一次(内部优化)是对给定的母波执行的最佳基础选择。为此,应用了三个附加成本函数并进行了比较。第二(外部优化)是基于给定固定压缩率的解码信号的最小失真来选择母小波。通过缩放过滤器在多分辨率分析框架中对母小波进行了参数化,这足以在正交情况下定义整个分解。该方法在两组十个肌电图(EMG)和十个心电图(ECG)信号上进行了测试,这些信号以50%-90%的压缩率压缩。对于90%的EMG(ECG)信号压缩率,压缩后的残差百分比从使用小波的离散小波变换(DWT)的(平均值)48.69.9%(21.58.4%)降低到导致最差的性能,降至28.43。使用DWPT时为0%(6.71.9%),具有最佳的基础选择和小波优化。总之,通过对子小波进行最佳的基础选择和参数化优化,相对于DWT和子小波的randon选择,可以显着提高信号压缩性能。该方法提供了用于压缩的最佳信号表示的自适应方法,因此可以应用于任何类型的生物医学信号。

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