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小波去噪

于 2021-03-22 发布
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下载积分: 1 下载次数: 8

代码说明:

说明:  利用MATLAB产生正弦信号,加入高斯白噪声后利用小波变换技术去噪声(The sine signal is generated by MATLAB, and the noise is removed by wavelet transform after Gaussian white noise is added)

文件列表:

小波去噪, 0 , 2021-03-22
小波去噪\~$高斯白噪声.docx, 162 , 2021-03-22
小波去噪\小波去噪.docx, 447839 , 2020-09-03
小波去噪\小波去噪.m, 1493 , 2021-03-22

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